36.8 Model Detail Views
Model detail views are algorithm-specific. Viewing the
model detail views will provide you with additional information about the model you
created. The names of model detail views begin with DM$. Some model views, such as
Global Name-Value Pairs view (DM$VG
model_name), Computed Settings view (DM$VS
model_name), Model Build Alerts view
(DM$VW
model_name), and Normalization
and Missing Value Handling view (DM$VN
model_name), are shared by all algorithms and are documented separately.
Aside from that, classification, clustering, and regression algorithms share some common
views. The columns returned by these views may differ between algorithms.
The following are the model views, grouped by model function:
Association:
Classification, Regression, and Anomaly Detection:
- Model Detail View for Multivariate State Estimation Technique - Sequential Probability Ratio Test
- Model Detail Views for XGBoost
Clustering:
Feature Extraction:
Feature Selection:
Data Preparation and Other:
Time Series:
Model Detail Views for Exponential Smoothing
ONNX Models:
36.8.1 Model Detail Views for Association Rules
The model detail view
DM$VR
model_name contains the generated rules for association
models.
Model Views | Description |
---|---|
DM$VAmodel_name |
Association Rules For Transactional Data |
DM$VG model_name |
Global Name-Value Pairs |
DM$VI model_name:
|
Association Rule Itemsets |
DM$VR model_name |
Association Rules |
DM$VS model_name |
Computed Settings |
DM$VT model_name |
Association Rule Itemsets For Transactional Data |
DM$VW model_name |
Model Build Alerts |
DM$VR
model_name) different sets of columns.
Settings ODMS_ITEM_ID_COLUMN_NAME
and
ODMS_ITEM_VALUE_COLUMN_NAME
determine how each item is defined. If
ODMS_ITEM_ID_COLUMN_NAME
is set, the input format is called transactional
input, otherwise, the input format is called 2-Dimensional input. With transactional input, if
setting ODMS_ITEM_VALUE_COLUMN_NAME
is not set, each item is defined by
ITEM_NAME
, otherwise, each item is defined by ITEM_NAME
and
ITEM_VALUE
. With 2-Dimensional input, each item is defined by
ITEM_NAME
, ITEM_SUBNAME
and ITEM_VALUE
.
Setting ASSO_AGGREGATES
specifies the columns to aggregate, which is displayed
in the view.
Note:
SettingASSO_AGGREGATES
is not allowed for 2-dimensional input.
Transactional Input Without ASSO_AGGREGATES Setting
ITEM_NAME
(ODMS_ITEM_ID_COLUMN_NAME
)
and do not set ITEM_VALUE
(ODMS_ITEM_VALUE_COLUMN_NAME
), the
view contains the following. The consequent item is defined with only the name field. If you
also set ITEM_VALUE
, the view has the additional column
CONSEQUENT_VALUE
that specifies the value
field.Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
RULE_ID NUMBER
RULE_SUPPORT NUMBER
RULE_CONFIDENCE NUMBER
RULE_LIFT NUMBER
RULE_REVCONFIDENCE NUMBER
ANTECEDENT_SUPPORT NUMBER
NUMBER_OF_ITEMS NUMBER
CONSEQUENT_SUPPORT NUMBER
CONSEQUENT_NAME VARCHAR2(4000)
ANTECEDENT SYS.XMLTYPE
Table 36-16 Rule View Columns for Transactional Inputs
Column Name | Description |
---|---|
|
A partition in a partitioned model to retrieve details. |
|
The identifier of the rule. |
|
The number of transactions that satisfy the rule. |
|
The likelihood of a transaction satisfying the rule. |
|
The degree of improvement in the prediction over random chance when the rule is satisfied. |
|
The number of transactions in which the rule occurs divided by the number of transactions in which the consequent occurs. |
|
The ratio of the number of transactions that satisfy the antecedent to the total number of transactions. |
|
The total number of attributes referenced in the antecedent and consequent of the rule. |
|
The ratio of the number of transactions that satisfy the consequent to the total number of transactions. |
|
The name of the consequent. |
|
The value of the consequent. This column is present when
|
|
The antecedent is described as an itemset. At the itemset
level, it specifies the number of aggregates, and if not zero, the names of the columns to
be aggregated (as well as the mapping to
|
Transactional Input With ASSO_AGGREGATES Setting
-
Rule view when
ODMS_ITEM_ID_COLUMN_NAME
is set andItem_value
(ODMS_ITEM_VALUE_COLUMN_NAME
) is not set. -
Rule view when
ODMS_ITEM_ID_COLUMN_NAME
is set andItem_value
(ODMS_ITEM_VALUE_COLUMN_NAME
) is set withTYPE
as numerical, the view has aCONSEQUENT_VALUE
column. -
Rule view when
ODMS_ITEM_ID_COLUMN_NAME
is set andItem_value
(ODMS_ITEM_VALUE_COLUMN_NAME
) is set withTYPE
as categorical, the view has aCONSEQUENT_VALUE
column.
For the example that produces the following rules, see “Example: Calculating Aggregates” in Oracle Machine Learning for SQL Concepts.
The view reports two sets of aggregates results:
-
ANT_RULE_PROFIT
refers to the total profit for the antecedent itemset with respect to the rule, the profit for each individual item of the antecedent itemset is shown in theANTECEDENT(XMLtype)
column,CON_RULE_PROFIT
refers to the total profit for the consequent item with respect to the rule.In the example, for rule (A, B) => C, the rule itemset (A, B, C) occurs in the transactions of customer 1 and customer 3. The
ANT_RULE_PROFIT
is $21.20, TheANTECEDENT
is shown as follow, which tells that item A has profit 5.00 + 3.00 = $8.00 and item B has profit 3.20 + 10.00 = $13.20, which sum up toANT_RULE_PROFIT
.<itemset NUMAGGR="1" ASSO_AGG0="profit"><item><item_name>A</item_name><ASSO_AGG0>8.0E+000</ASSO_AGG0></item><item><item_name>B</item_name><ASSO_AGG0>1.32E+001</ASSO_AGG0></item></itemset> The CON_RULE_PROFIT is 12.00 + 14.00 = $26.00
-
ANT_PROFIT
refers to the total profit for the antecedent itemset, whileCON_PROFIT
refers to the total profit for the consequent item. The difference betweenCON_PROFIT
andCON_RULE_PROFIT
(the same applies toANT_PROFIT
andANT_RULE_PROFIT
) is thatCON_PROFIT
counts all profit for the consequent item across all transactions where the consequent occurs, whileCON_RULE_PROFIT
only counts across transactions where the rule itemset occurs.For example, item C occurs in transactions for customer 1, 2 and 3,
CON_PROFIT
is 12.00 + 4.20 + 14.00 = $30.20, whileCON_RULE_PROFIT
only counts transactions for customer 1 and 3 where the rule itemset (A, B, C) occurs.Similarly,
ANT_PROFIT
counts all transactions where itemset (A, B) occurs, whileANT_RULE_PROFIT
counts only transactions where the rule itemset (A, B, C) occurs. In this example, by coincidence, both count transactions for customer 1 and 3, and have the same value.
Example 36-16 Examples
The following
example shows the view when setting ASSO_AGGREGATES
specifies column profit and
column sales to be aggregated. In this example, ITEM_VALUE
column is not
specified.
Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
RULE_ID NUMBER
RULE_SUPPORT NUMBER
RULE_CONFIDENCE NUMBER
RULE_LIFT NUMBER
RULE_REVCONFIDENCE NUMBER
ANTECEDENT_SUPPORT NUMBER
NUMBER_OF_ITEMS NUMBER
CONSEQUENT_SUPPORT NUMBER
CONSEQUENT_NAME VARCHAR2(4000)
ANTECEDENT SYS.XMLTYPE
ANT_RULE_PROFIT BINARY_DOUBLE
CON_RULE_PROFIT BINARY_DOUBLE
ANT_PROFIT BINARY_DOUBLE
CON_PROFIT BINARY_DOUBLE
ANT_RULE_SALES BINARY_DOUBLE
CON_RULE_SALES BINARY_DOUBLE
ANT_SALES BINARY_DOUBLE
CON_SALES BINARY_DOUBLE
The rule view has a CONSEQUENT_VALUE
column when
ODMS_ITEM_ID_COLUMN_NAME
is set and Item_value
(ODMS_ITEM_VALUE_COLUMN_NAME
) is set with TYPE
as numerical
or categorical.
2-Dimensional Inputs
In Oracle Machine Learning for SQL, association models can be built
using either transactional or two-dimensional data formats. For two-dimensional input, each item
is defined by three fields: NAME
, VALUE
and
SUBNAME
. The NAME
field is the name of the column. The
VALUE
field is the content of the column. The SUBNAME
field
is used when the input data table contains a nested table. In that case,
SUBNAME
is the name of the nested table's column. See, Example: Creating a Nested Column for Market Basket Analysis. In
this example, there is a nested column. The CONSEQUENT_SUBNAME
is the
ATTRIBUTE_NAME
part of the nested column. That is, 'O/S Documentation
Set - English'
and CONSEQUENT_VALUE
is the value part of the nested
column, which is, 1.
The view uses three columns for the consequent. The rule view has the following columns:
Name Type
----------------------- ---------------------
PARTITION_NAME VARCHAR2(128)
RULE_ID NUMBER
RULE_SUPPORT NUMBER
RULE_CONFIDENCE NUMBER
RULE_LIFT NUMBER
RULE_REVCONFIDENCE NUMBER
ANTECEDENT_SUPPORT NUMBER
NUMBER_OF_ITEMS NUMBER
CONSEQUENT_SUPPORT NUMBER
CONSEQUENT_NAME VARCHAR2(4000)
CONSEQUENT_SUBNAME VARCHAR2(4000)
CONSEQUENT_VALUE VARCHAR2(4000)
ANTECEDENT SYS.XMLTYPE
Note:
All of the types for three columns for the consequent areVARCHAR2
. ASSO_AGGREGATES
is
not applicable for 2-Dimensional input format.
The following table displays rule view columns for 2-Dimensional input with the descriptions of only the fields that are specific to 2-D inputs.
Table 36-17 Rule View for 2-Dimensional Input
Column Name | Description |
---|---|
CONSEQUENT_SUBNAME |
For two-dimensional inputs,
|
|
The value of the consequent when setting
|
|
The antecedent is described as an itemset. The itemset
contains As an example, assuming that this is not a
nested table input, and the antecedent contains one item: (name
For 2-Dimensional input with nested table, the subname field is filled. |
Global Name-Value Pairs View for Association Rules
Global Name-Value Pairs View produces a single column for an association model. The following table describes the columns returned for association model.
Table 36-18 Global Name-Value Pairs View for an Association Model
Name | Description |
---|---|
|
The number of itemsets generated. |
|
The maximum support. |
|
The total number of rows used in the build. |
|
The number of association rules in the model generated. |
|
The number of the transactions in the input data. |
36.8.2 Model Detail View for Frequent Itemsets
The model detail view DM$VI
model_name contains information about frequent itemsets.
The Association Rule Itemsets view (DM$VI
model_name) has the following columns:
Name Type
------------- ------------------
PARTITION_NAME VARCHAR2 (128)
ITEMSET_ID NUMBER
SUPPORT NUMBER
NUMBER_OF_ITEMS NUMBER
ITEMSET SYS.XMLTYPE
Table 36-19 Association Rule Itemsets View
Column Name | Description |
---|---|
|
A partition in a partitioned model |
|
Itemset identifier |
|
Support of the itemset |
|
Number of items in the itemset |
|
Frequent itemset The structure of the |
36.8.3 Model Detail Views for Transactional Itemsets
The model detail view DM$VT
model_name contains information about the transactional itemsets.
For the very common case of transactional data without aggregates, the Association Rule Itemsets For Transactional Data view (DM$VT
model_name) provides the itemsets information in transactional format. This view can help improve performance for some queries as compared to the view with the XML column. The transactional itemsets view has the following columns:
Name Type
----------------- -----------------
PARTITION_NAME VARCHAR2(128)
ITEMSET_ID NUMBER
ITEM_ID NUMBER
SUPPORT NUMBER
NUMBER_OF_ITEMS NUMBER
ITEM_NAME VARCHAR2(4000)
Table 36-20 Association Rule Itemsets For Transactional Data View
Column Name | Description |
---|---|
|
A partition in a partitioned model |
|
Itemset identifier |
|
Item identifier |
|
Support of the itemset |
|
Number of items in the itemset |
|
The name of the item |
36.8.4 Model Detail View for Transactional Rule
The model detail view DM$VA
model_name contains information about transactional rules and transactional itemsets.
Transactional data without aggregates also has an Association Rules For Transactional Data view (DM$VA
model_name). This view can improve performance for some queries as compared to the view with the XML column. The transactional rule view has the following columns:
Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
RULE_ID NUMBER
ANTECEDENT_PREDICATE VARCHAR2(4000)
CONSEQUENT_PREDICATE VARCHAR2(4000)
RULE_SUPPORT NUMBER
RULE_CONFIDENCE NUMBER
RULE_LIFT NUMBER
RULE_REVCONFIDENCE NUMBER
RULE_ITEMSET_ID NUMBER
ANTECEDENT_SUPPORT NUMBER
CONSEQUENT_SUPPORT NUMBER
NUMBER_OF_ITEMS NUMBER
Table 36-21 Association Rules For Transactional Data View
Column Name | Description |
---|---|
|
A partition in a partitioned model |
|
Rule identifier |
|
Name of the Antecedent item. |
|
Name of the Consequent item |
|
Support of the rule |
|
The likelihood a transaction satisfies the rule when it contains the Antecedent. |
|
The degree of improvement in the prediction over random chance when the rule is satisfied |
|
The number of transactions in which the rule occurs divided by the number of transactions in which the consequent occurs |
|
Itemset identifier |
|
The ratio of the number of transactions that satisfy the antecedent to the total number of transactions |
|
The ratio of the number of transactions that satisfy the consequent to the total number of transactions |
|
Number of items in the rule |
36.8.5 Model Detail Views for Classification Algorithms
Model detail views for classification algorithms are the target map view and scoring cost view, which are applicable to all classification algorithms.
Model Views | Description |
---|---|
DM$VA model_name |
Variable Importance |
DM$VC model_name |
Scoring Cost Matrix |
DM$VG model_name |
Global Name-Value Pairs |
DM$VS model_name |
Computed Settings |
DM$VT model_name
|
Classification Targets |
DM$VW model_name:
|
Model Build Alerts |
The Classification Targets view (DM$VT
model_name) describes the target distribution for classification models. The view has the following columns:
Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
TARGET_VALUE NUMBER/VARCHAR2
TARGET_COUNT NUMBER
TARGET_WEIGHT NUMBER
Table 36-22 Classification Targets View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Target value, numerical or categorical |
|
Number of rows for a given |
|
Weight for a given |
The Scoring Cost Matrix view (DM$VC
model_name) describes the scoring cost matrix for classification models. The view has the following columns:
Name Type
----------------------------------------- --------------------------------
PARTITION_NAME VARCHAR2(128)
ACTUAL_TARGET_VALUE NUMBER/VARCHAR2
PREDICTED_TARGET_VALUE NUMBER/VARCHAR2
COST NUMBER
Table 36-23 Scoring Cost Matrix View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
A valid target value |
|
Predicted target value |
|
Associated cost for the actual and predicted target value pair |
36.8.6 Model Detail Views for Decision Tree
The model detail views specific to Decision Tree are the hierarchy view, node statistics view, node description view, and the cost matrix view.
The Decision Tree Hierarchy view (DM$VP
model_name) describes the decision tree hierarchy and the split information for each level in the decision tree. The view has the following columns:
Name Type
---------------------------------- ---------------------------
PARTITION_NAME VARCHAR2(128)
PARENT NUMBER
SPLIT_TYPE VARCHAR2
NODE NUMBER
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
OPERATOR VARCHAR2
VALUE SYS.XMLTYPE
Table 36-24 Decision Tree Hierarchy View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Node ID of the parent |
|
The main or surrogate split |
|
The node ID |
|
The attribute used as the splitting criterion at the parent node to produce this node. |
|
Split attribute subname. The value is null for non-nested columns. |
|
Split operator |
|
Value used as the splitting criterion. This is an XML element described using the For example, |
The Decision Tree Statistics view (DM$VI
model_name) describes the statistics associated with individual tree nodes. The statistics include a target histogram for the data in the node. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
NODE NUMBER
NODE_SUPPORT NUMBER
PREDICTED_TARGET_VALUE NUMBER/VARCHAR2
TARGET_VALUE NUMBER/VARCHAR2
TARGET_SUPPORT NUMBER
Table 36-25 Decision Tree Statistics View
Parameter | Description |
---|---|
|
Partition name in a partitioned model |
|
The node ID |
|
Number of records in the training set that belong to the node |
|
Predicted Target value |
|
A target value seen in the training data |
|
The number of records that belong to the node and have the value specified in the |
The Decision Tree Nodes (DM$VO
model_name) view describes higher level node. The DM$VO
model_name has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
NODE NUMBER
NODE_SUPPORT NUMBER
PREDICTED_TARGET_VALUE NUMBER/VARCHAR2
PARENT NUMBER
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
OPERATOR VARCHAR2
VALUE SYS.XMLTYPE
Table 36-26 Decision Tree Nodes View
Parameter | Description |
---|---|
|
Partition name in a partitioned model |
|
The node ID |
|
Number of records in the training set that belong to the node |
|
Predicted Target value |
|
The ID of the parent |
|
Specifies the attribute name |
|
Specifies the attribute subname |
|
Attribute predicate operator - a conditional operator taking the following values: IN, = , <>, < , >, <=, and >= |
|
Value used as the description criterion. This is an XML element described using the For example, |
The Decision Tree Build Cost Matrix view (DM$VM
model_name) describes the cost matrix used by the Decision Tree build. The DM$VM
model_name view has the following columns:
Name Type
----------------------------------------- --------------------------------
PARTITION_NAME VARCHAR2(128)
ACTUAL_TARGET_VALUE NUMBER/VARCHAR2
PREDICTED_TARGET_VALUE NUMBER/VARCHAR2
COST NUMBER
Table 36-27 Decision Tree Build Cost Matrix View
Parameter | Description |
---|---|
|
Partition name in a partitioned model |
|
Valid target value |
|
Predicted Target value |
|
Associated cost for the actual and predicted target value pair |
36.8.7 Model Detail Views for Generalized Linear Model
Model detail views specific to Generalized Linear Model (GLM) such as details and row diagnostics for linear and logistic regression models are discussed.
The GLM Regression Attribute Diagnostics view (DM$VD
model_name) describes the final model information for both linear regression models and logistic regression models.
For linear regression, the view DM$VD
model_name has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
FEATURE_EXPRESSION VARCHAR2(4000)
COEFFICIENT BINARY_DOUBLE
STD_ERROR BINARY_DOUBLE
TEST_STATISTIC BINARY_DOUBLE
P_VALUE BINARY_DOUBLE
VIF BINARY_DOUBLE
STD_COEFFICIENT BINARY_DOUBLE
LOWER_COEFF_LIMIT BINARY_DOUBLE
UPPER_COEFF_LIMIT BINARY_DOUBLE
For logistic regression, the view DM$VD
model_name has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
TARGET_VALUE NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
FEATURE_EXPRESSION VARCHAR2(4000)
COEFFICIENT BINARY_DOUBLE
STD_ERROR BINARY_DOUBLE
TEST_STATISTIC BINARY_DOUBLE
P_VALUE BINARY_DOUBLE
STD_COEFFICIENT BINARY_DOUBLE
LOWER_COEFF_LIMIT BINARY_DOUBLE
UPPER_COEFF_LIMIT BINARY_DOUBLE
EXP_COEFFICIENT BINARY_DOUBLE
EXP_LOWER_COEFF_LIMIT BINARY_DOUBLE
EXP_UPPER_COEFF_LIMIT BINARY_DOUBLE
Table 36-29 Model View for Linear and Logistic Regression Models
Column Name | Description |
---|---|
|
The name of a feature in the model |
|
Valid target value |
|
The attribute name when there is no subname, or first part of the attribute name when there is a subname. |
|
Nested column subname. The value is null for non-nested columns. When the nested column is numeric, the machine learning attribute is identified by the combination |
|
A unique value that can be assumed by a categorical column or nested categorical column. For categorical columns, a machine learning attribute is identified by a unique |
|
The feature name constructed by the algorithm when feature selection is enabled. If feature selection is not enabled, the feature name is the fully-qualified attribute name (attribute_name.attribute_subname if the attribute is in a nested column). For categorical attributes, the algorithm constructs a feature name that has the following form: fully-qualified_attribute_name.attribute_value When feature generation is enabled, a term in the model can be a single machine learning attribute or the product of up to 3 machine learning attributes. Component machine learning attributes can be repeated within a single term. If feature generation is not enabled or, if feature generation is enabled, but no multiple component terms are discovered by the Note: In 12c Release 2, the algorithm does not subtract the mean from numerical components. |
|
The estimated coefficient. |
|
Standard error of the coefficient estimate. |
|
For linear regression, the t-value of the coefficient estimate. For logistic regression, the Wald chi-square value of the coefficient estimate. |
|
Probability of the |
|
Variance Inflation Factor. The value is zero for the intercept. For logistic regression, |
|
Standardized estimate of the coefficient. |
|
Lower confidence bound of the coefficient. |
|
Upper confidence bound of the coefficient. |
|
Exponentiated coefficient for logistic regression. For linear regression, |
|
Exponentiated coefficient for lower confidence bound of the coefficient for logistic regression. For linear regression, |
|
Exponentiated coefficient for upper confidence bound of the coefficient for logistic regression. For linear regression, |
The GLM Regression Row Diagnostics view DM$VA
model_name describes row level information for both linear regression models and logistic regression models. For linear regression, the view DM$VA
model_name has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
CASE_ID NUMBER/VARHCAR2, DATE, TIMESTAMP,
TIMESTAMP WITH TIME ZONE,
TIMESTAMP WITH LOCAL TIME ZONE
TARGET_VALUE BINARY_DOUBLE
PREDICTED_TARGET_VALUE BINARY_DOUBLE
Hat BINARY_DOUBLE
RESIDUAL BINARY_DOUBLE
STD_ERR_RESIDUAL BINARY_DOUBLE
STUDENTIZED_RESIDUAL BINARY_DOUBLE
PRED_RES BINARY_DOUBLE
COOKS_D BINARY_DOUBLE
Table 36-30 GLM Regression Row Diagnostics View for Linear Regression
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Name of the case identifier |
|
The actual target value as taken from the input row |
|
The model predicted target value for the row |
|
The diagonal element of the n*n (n=number of rows) that the Hat matrix identifies with a specific input row. The model predictions for the input data are the product of the Hat matrix and vector of input target values. The diagonal elements (Hat values) represent the influence of the ith row on the ith fitted value. Large Hat values are indicators that the ith row is a point of high leverage, a potential outlier. |
|
The difference between the predicted and actual target value for a specific input row. |
|
The standard error residual, sometimes called the Studentized residual, re-scales the residual to have constant variance across all input rows in an effort to make the input row residuals comparable. The process multiplies the residual by square root of the row weight divided by the product of the model mean square error and 1 minus the Hat value. |
|
Studentized deletion residual adjusts the standard error residual for the influence of the current row. |
|
The predictive residual is the weighted square of the deletion residuals, computed as the row weight multiplied by the square of the residual divided by 1 minus the Hat value. |
|
Cook's distance is a measure of the combined impact of the ith case on all of the estimated regression coefficients. |
For logistic regression, the view DM$VA
model_name has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
CASE_ID NUMBER/VARHCAR2, DATE, TIMESTAMP,
TIMESTAMP WITH TIME ZONE,
TIMESTAMP WITH LOCAL TIME ZONE
TARGET_VALUE NUMBER/VARCHAR2
TARGET_VALUE_PROB BINARY_DOUBLE
Hat BINARY_DOUBLE
WORKING_RESIDUAL BINARY_DOUBLE
PEARSON_RESIDUAL BINARY_DOUBLE
DEVIANCE_RESIDUAL BINARY_DOUBLE
C BINARY_DOUBLE
CBAR BINARY_DOUBLE
DIFDEV BINARY_DOUBLE
DIFCHISQ BINARY_DOUBLE
Table 36-31 GLM Regression Row Diagnostics View for Logistic Regression
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Name of the case identifier |
|
The actual target value as taken from the input row |
|
Model estimate of the probability of the predicted target value. |
|
The Hat value concept from linear regression is extended to logistic regression by multiplying the linear regression Hat value by the variance function for logistic regression, the predicted probability multiplied by 1 minus the predicted probability. |
|
The working residual is the residual of the working response. The working response is the response on the linearized scale. For logistic regression it has the form: the ith row residual divided by the variance of the ith row prediction. The variance of the prediction is the predicted probability multiplied by 1 minus the predicted probability.
|
|
The Pearson residual is a re-scaled version of the working residual, accounting for the weight. For logistic regression, the Pearson residual multiplies the residual by a factor that is computed as square root of the weight divided by the variance of the predicted probability for the ith row.
|
|
The |
|
Measures the overall change in the fitted logits due to the deletion of the ith observation for all points including the one deleted (the ith point). It is computed as the square of the Pearson residual multiplied by the Hat value divided by the square of 1 minus the Hat value. Confidence interval displacement diagnostics that provides scalar measure of the influence of individual observations. |
|
C and CBAR are extensions of Cooks’ distance for logistic regression. CBAR measures the overall change in the fitted logits due to the deletion of the ith observation for all points excluding the one deleted (the ith point). It is computed as the square of the Pearson residual multiplied by the Hat value divided by (1 minus the Hat value)
Confidence interval displacement diagnostic which measures the influence of deleting an individual observation. |
|
A statistic that measures the change in deviance that occurs when an observation is deleted from the input. It is computed as the square of the deviance residual plus |
|
A statistic that measures the change in the Pearson chi-square statistic that occurs when an observation is deleted from the input. It is computed as |
Global Details for GLM: Linear Regression
The following table describes Global Name-Value Pairs (DM$VG) for a linear regression model.
Table 36-32 Global Details for Linear Regression
Name | Description |
---|---|
|
Adjusted R-Square |
|
Akaike's information criterion |
|
Coefficient of variation |
|
Indicates whether the model build process has converged to specified tolerance. The following are the possible values:
|
|
Corrected total degrees of freedom |
|
Corrected total sum of squares |
|
Dependent mean |
|
Error degrees of freedom |
|
Error mean square |
|
Error sum of squares |
|
Model F value statistic |
|
Estimated mean square error of the prediction, assuming multivariate normality |
|
Hocking Sp statistic |
|
Tracks the number of SGD iterations. Applicable only when the solver is SGD. |
|
JP statistic (the final prediction error) |
|
Model degrees of freedom |
|
Model F value probability |
|
Model mean square error |
|
Model sum of square errors |
|
Number of parameters (the number of coefficients, including the intercept) |
|
Number of rows |
|
R-Square |
|
The number of predictors excluded from the model due to multi-collinearity |
|
Root mean square error |
|
Schwarz's Bayesian information criterion |
Global Details for GLM: Logistic Regression
The following table returns Global Name-Value Pairs (DM$VG) for a logistic regression model.
Table 36-33 Global Details for Logistic Regression
Name | Description |
---|---|
|
Akaike's criterion for the fit of the baseline, intercept-only, model |
|
Akaike's criterion for the fit of the intercept and the covariates (predictors) mode |
|
Indicates whether the model build process has converged to specified tolerance. The following are the possible values:
|
|
Dependent mean |
|
Tracks the number of SGD iterations (number of IRLS iterations). Applicable only when the solver is SGD. |
|
Likelihood ratio degrees of freedom |
|
Likelihood ratio chi-square value |
|
Likelihood ratio chi-square probability value |
|
-2 log likelihood of the baseline, intercept-only, model |
|
-2 log likelihood of the model |
|
Number of parameters (the number of coefficients, including the intercept) |
|
Number of rows |
|
Percent of correct predictions |
|
Percent of incorrectly predicted rows |
|
Percent of cases where the estimated probabilities are equal for both target classes |
|
Pseudo R-square Cox and Snell |
|
Pseudo R-square Nagelkerke |
|
The number of predictors excluded from the model due to multi-collinearity |
|
Schwarz's Criterion for the fit of the baseline, intercept-only, model |
|
Schwarz's Criterion for the fit of the intercept and the covariates (predictors) model |
Note:
-
When ridge regression is enabled, fewer global details are returned. For information about ridge, see Oracle Machine Learning for SQL Concepts.
-
When the value is
NULL
for a partitioned model, an exception is thrown. When the value is not null, it must contain the desired partition name.
36.8.8 Model Detail View for Multivariate State Estimation Technique - Sequential Probability Ratio Test
The model detail view specific to Multivariate State Estimation Technique - Sequential Probability Ratio Test contains information about Global Name-Value Paris.
The following table lists the Global Name-Value Pairs (DM$VG
model_name) for an MSET-SPRT. This statistic is included when due to memory constraints MSET-SPRT cannot use the MSET_MEMORY_VECTORS
value set by the user.
Table 36-34 MSET-SPRT Information in the Model Global View
Name | Description |
---|---|
NUM_MVEC |
The number of memory vectors used by the model. |
36.8.9 Model Detail Views for Naive Bayes
The model detail views specific to Naive Bayes are the prior view and result view.
The Naive Bayes Target Priors view (DM$VP
model_name) describes the priors of the targets for a Naive Bayes model. The view has the following columns:
Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
TARGET_NAME VARCHAR2(128)
TARGET_VALUE NUMBER/VARCHAR2
PRIOR_PROBABILITY BINARY_DOUBLE
COUNT NUMBER
Table 36-35 Naive Bayes Target Priors View for Naive Bayes
Column Name | Description |
---|---|
|
The name of a feature in the model |
|
Name of the target column |
|
Target value, numerical or categorical |
|
Prior probability for a given |
|
Number of rows for a given |
The Naive Bayes Conditional Probabilities view (DM$VV
model_view) describes the conditional probabilities of the Naive Bayes model. The view has the following columns:
Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
TARGET_NAME VARCHAR2(128)
TARGET_VALUE NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
CONDITIONAL_PROBABILITY BINARY_DOUBLE
COUNT NUMBER
Table 36-36 Naive Bayes Conditional Probabilities View for Naive Bayes
Column Name | Description |
---|---|
|
The name of a feature in the model |
|
Name of the target column |
|
Target value, numerical or categorical |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Machine learning attribute value for the column |
|
Conditional probability of a machine learning attribute for a given target |
|
Number of rows for a given machine learning attribute and a given target |
36.8.10 Model Detail Views for Neural Network
Model detail views specific to Neural Network contain information about the weights of the neurons: input layer and hidden layers.
The Neural Network Weights view (DM$VA
model_name) has the following columns:
Name Type
---------------------- -----------------------
PARTITION_NAME VARCHAR2(128)
LAYER NUMBER
IDX_FROM NUMBER
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
IDX_TO NUMBER
TARGET_VALUE NUMBER/VARCHAR2
WEIGHT BINARY_DOUBLE
Table 36-38 Neural Network Weights View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Layer ID, 0 as an input layer |
|
Node index that the weight connects from (attribute id for input layer) |
|
Attribute name (only for the input layer) |
|
Attribute subname. The value is null for non-nested columns. |
|
Categorical attribute value |
|
Node index that the weights connects to |
|
Target value. The value is null for regression. |
|
Value of the weight |
The view Global Name-Value Pairs (DM$VG
model_name) is a pre-existing view. The following name-value pairs are specific to a Neural Network view.
Table 36-39 Global Name-Value Pairs Viewfor Neural Network
Name | Description |
---|---|
|
Indicates whether the model build process has converged to specified tolerance. The following are the possible values:
|
|
Number of iterations |
|
Loss function value (if it is with |
|
Number of rows in the model (or partitioned model) |
36.8.11 Model Detail Views for Random Forest
Model detail views specific to Random Forest contain variable importance measures and statistics.
Model detail views and statistics specific to Random Forest are:
-
Variable Importance statistics
DM$VA
model_name -
Random Forest statistics in the Global Name-Value Pairs
DM$VG
model_name view
One of the important outputs from a Random Forest model build is a ranking of attributes based on their relative importance. This is measured using Mean Decrease Gini. The DM$VA
model_name view has the following columns:
Name Type
------------------------ ---------------
PARTITION_NAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(128)
ATTRIBUTE_IMPORTANCE BINARY_DOUBLE
Table 36-40 Variable Importance Model View
Column Name | Description |
---|---|
|
Partition name. The value is null for models which are not partitioned. |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Measure of importance for an attribute in the forest (mean Decrease Gini value) |
The Global Name-Value Pairs (DM$VG
model_name) view is a pre-existing view. The following name-value pairs are added to the view.
Table 36-41 Random Forest Statistics Information In Model Global View
Name | Description |
---|---|
|
Average depth of the trees in the forest |
|
Average number of nodes per tree |
|
Maximum depth of the trees in the forest |
|
Maximum number of nodes per tree |
|
Minimum depth of the trees in the forest |
|
Minimum number of nodes per tree |
|
The total number of rows used in the build |
36.8.12 Model Detail View for Support Vector Machine
Model detail views specific to Support Vector Machine (SVM) contain linear coefficients and support vector statistics.
Model Views | Description |
---|---|
DM$VCS model_name |
Scoring Cost Matrix |
DM$VG model_name |
Global Name-Value Pairs |
DM$VN model_name |
Normalization and Missing Value Handling |
DM$VS model_name |
Computed Settings |
DM$VT model_name |
Classification Targets |
DM$VW model_name |
Model Build Alerts |
The linear coefficient view DM$VL
model_name describes the coefficients of a linear SVM algorithm. The target_value field in the view is present only for classification and has the type of the target. Regression models do not have a target_value field.
The reversed_coefficient field shows the value of the coefficient after reversing the automatic data preparation transformations. If data preparation is disabled, then coefficient and reversed_coefficient have the same value. The view has the following columns:
Name Type
----------------------------------------- --------------------------------
PARTITION_NAME VARCHAR2(128)
TARGET_VALUE NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
COEFFICIENT BINARY_DOUBLE
REVERSED_COEFFICIENT BINARY_DOUBLE
Table 36-42 Linear Coefficient View for Support Vector Machine
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Target value, numerical or categorical |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Value of a categorical attribute |
|
Projection coefficient value |
|
Coefficient transformed on the original scale |
Table 36-43 Support Vector Statistics Information In Model Global View
Name | Description |
---|---|
|
Indicates whether the model build process has converged to specified tolerance:
|
|
Number of iterations performed during build |
|
Number of rows used for the build |
|
Number of rows removed due to 0 norm. This applies to one-class linear models only. |
36.8.13 Model Detail Views for XGBoost
The model detail views specific to XGBoost contain information about Feature Importance view and Global Name-Value Pairs view.
The DM$VImodel_name
view reports the feature importance values for each attribute of each partition of the model.
The view has the following columns for tree models (gbtree
and dart
boosters).
Name Type
----------------- --------------
PNAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
GAIN BINARY_DOUBLE
COVER BINARY_DOUBLE
FREQUENCY BINARY_DOUBLE
Table 36-44 Feature Importance View for a Tree Model
Column Name | Description |
---|---|
PNAME |
The name of a partition in a partitioned model. |
ATTRIBUTE_NAME |
The column name. |
ATTRIBUTE_SUBNAME |
The nested column subname; the value is null for non-nested columns. |
ATTRIBUTE_VALUE |
The value of a categorical attribute. |
GAIN |
The fractional contribution of each feature to the model based on the total gain of a feature’s splits; a higher percentage means a more important predictive feature. |
COVER |
The number of observation either seen by a split or collected by a leaf during training. |
FREQUENCY |
A percentage representing the relative number of times a feature has been used in trees. |
For a linear model (gblinear
) booster, the feature importance is the absolute magnitude of linear coefficients.
The view has the following columns for linear models.
Name Type
----------------- --------------
PNAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
WEIGHT BINARY_DOUBLE
CLASS BINARY_DOUBLE
Table 36-45 Feature Importance View for a Linear Model
Column Name | Description |
---|---|
PNAME |
The name of a partition in a partitioned model. |
ATTRIBUTE_NAME |
The column name. |
ATTRIBUTE_SUBNAME |
The nested column subname; the value is null for non-nested columns. |
ATTRIBUTE_VALUE |
The value of a categorical attribute. |
WEIGHT |
The linear coefficient of the feature. |
CLASS |
The class label for a multiclass model. |
The DM$VGmodel_name
view reports global statistics for an
XGBoost model. The statistics include an evaluation of
the training data set using the evaluation metric you specified with
the learning task eval_metric
setting, or the default
eval_metric
if you didn't specify one. The view displays only
the result of the last training iteration. When you specify more than one
eval_metric
, the view contains multiple rows, one for each
eval_metric
.
36.8.14 Model Detail Views for Clustering Algorithms
Oracle Machine Learning for SQL supports these clustering algorithms: Expectation Maximization (EM), k-Means (KM), and orthogonal partitioning clustering (O-Cluster, OC).
All clustering algorithms share the following views:
Model Views | Description |
---|---|
DM$VD model_name:
|
Clustering Description |
DM$VA model_name |
Clustering Attribute Statistics |
DM$VH model_name |
Clustering Histograms |
DM$VR model_name |
Clustering Rules |
The Cluster Description view DM$VD
model_name describes cluster level information about a clustering model. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
CLUSTER_ID NUMBER
CLUSTER_NAME NUMBER/VARCHAR2
RECORD_COUNT NUMBER
PARENT NUMBER
TREE_LEVEL NUMBER
LEFT_CHILD_ID NUMBER
RIGHT_CHILD_ID NUMBER
Table 36-46 Clustering Description View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
The ID of a cluster in the model |
|
Specifies the label of the cluster |
|
Specifies the number of records |
|
The ID of the parent |
|
Specifies the number of splits from the root |
|
The ID of the child cluster on the left side of the split |
|
The ID of the child cluster on the right side of the split |
The attribute view DM$VA
model_name describes attribute level information about a clustering model. The values of the mean, variance, and mode for a particular cluster can be obtained from this view. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
CLUSTER_ID NUMBER
CLUSTER_NAME NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
MEAN BINARY_DOUBLE
VARIANCE BINARY_DOUBLE
MODE_VALUE VARCHAR2(4000)
Table 36-47 Clustering Attribute Statistics
Column Name | Description |
---|---|
|
A partition in a partitioned model |
|
The ID of a cluster in the model |
|
Specifies the label of the cluster |
|
Specifies the attribute name |
|
Specifies the attribute subname |
|
The field returns the average value of a numeric attribute |
|
The variance of a numeric attribute |
|
The mode is the most frequent value of a categorical attribute |
The histogram view DM$VH
model_name describes histogram level information about a clustering model. The bin information as well as bin counts can be obtained from this view. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
CLUSTER_ID NUMBER
CLUSTER_NAME NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
BIN_ID NUMBER
LOWER_BIN_BOUNDARY BINARY_DOUBLE
UPPER_BIN_BOUNDARY BINARY_DOUBLE
ATTRIBUTE_VALUE VARCHAR2(4000)
COUNT NUMBER
Table 36-48 Clustering Histograms View
Column Name | Description |
---|---|
|
A partition in a partitioned model |
|
The ID of a cluster in the model |
|
Specifies the label of the cluster |
|
Specifies the attribute name |
|
Specifies the attribute subname |
|
Bin ID |
|
Numeric lower bin boundary |
|
Numeric upper bin boundary |
|
Categorical attribute value |
|
Histogram count |
The rule view DM$VR
model_name describes the rule level information about a clustering model. The information is provided at attribute predicate level. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
CLUSTER_ID NUMBER
CLUSTER_NAME NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
OPERATOR VARCHAR2(2)
NUMERIC_VALUE NUMBER
ATTRIBUTE_VALUE VARCHAR2(4000)
SUPPORT NUMBER
CONFIDENCE BINARY_DOUBLE
RULE_SUPPORT NUMBER
RULE_CONFIDENCE BINARY_DOUBLE
Table 36-49 Clustering Rules View
Column Name | Description |
---|---|
|
A partition in a partitioned model |
|
The ID of a cluster in the model |
|
Specifies the label of the cluster |
|
Specifies the attribute name |
|
Specifies the attribute subname |
|
Attribute predicate operator - a conditional operator taking the following values: IN, = , <>, < , >, <=, and >= |
|
Numeric lower bin boundary |
|
Categorical attribute value |
|
Attribute predicate support |
|
Attribute predicate confidence |
|
Rule level support |
|
Rule level confidence |
36.8.15 Model Detail Views for Expectation Maximization
Model detail views specific to Expectation Maximization (EM) contain additional information about an EM model. Additional views are available for EM Clustering, but are absent for EM Anomaly.
For EM Clustering model, the following views contain information that is not in the clustering views. For the clustering views, refer to "Model Detail Views for Clustering Algorithms".
The Expectation Maximization Components view (DM$VO
model_name) describes the EM Cluster components. The component view contains information about their prior probabilities and what cluster they map to. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
COMPONENT_ID NUMBER
CLUSTER_ID NUMBER
PRIOR_PROBABILITY BINARY_DOUBLE
Table 36-50 Expectation Maximization Components View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Unique identifier of a component |
|
The ID of a cluster in the model |
|
Component prior probability |
The Expectation Maximization Gaussian view (DM$VM
model_name) provides information about the mean and variance parameters for the attributes by Gaussian distribution models. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
COMPONENT_ID NUMBER
ATTRIBUTE_NAME VARCHAR2(4000)
MEAN BINARY_DOUBLE
VARIANCE BINARY_DOUBLE
The Expectation Maximization Bernoulli parameters view (DM$VF
model_name) provides information about the parameters of the multi-valued Bernoulli distributions used by the EM model. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
COMPONENT_ID NUMBER
ATTRIBUTE_NAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
FREQUENCY BINARY_DOUBLE
Table 36-51 Expectation Maximization Bernoulli parameters View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Unique identifier of a component |
|
Column name |
|
Categorical attribute value |
|
The frequency of the multivalued Bernoulli distribution for the attribute/value combination specified by |
For 2-Dimensional columns, EM provides an attribute ranking similar to that of attribute importance. This ranking is based on a rank-weighted average over Kullback–Leibler divergence computed for pairs of columns. This unsupervised attribute importance is shown in the Unsupervised Attribute Importance view (DM$VI
model_name) and has the following columns:
Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_IMPORTANCE_VALUE BINARY_DOUBLE
ATTRIBUTE_RANK NUMBER
Table 36-52 Unsupervised Attribute Importance View for Expectation Maximization
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Column name |
|
Importance value |
|
An attribute rank based on the importance value |
The pairwise
Kullback–Leibler divergence is reported in the Attribute Pair Kullback-Leibler Divergence view (DM$VB
model_name). This metric evaluates how much the observed joint distribution of two attributes diverges from the expected distribution under the assumption of independence. That is, the higher the value, the more dependent the two attributes are. The dependency value is scaled based on the size of the grid used for each pairwise computation. That ensures that all values fall within the [0; 1] range and are comparable. The view has the following columns:
Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
ATTRIBUTE_NAME_1 VARCHAR2(128)
ATTRIBUTE_NAME_2 VARCHAR2(128)
DEPENDENCY BINARY_DOUBLE
Table 36-53 Attribute Pair Kullback-Leibler Divergence View for Expectation Maximization
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Name of the first attribute |
|
Name of the second attribute |
|
Scaled pairwise Kullback-Leibler divergence |
The projection table DM$VP
model_name shows the coefficients used by random projections to map nested columns to a lower dimensional space. The view has rows only when nested or text data is present in the build data. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
FEATURE_NAME VARCHAR2(4000)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
COEFFICIENT NUMBER
Table 36-54 Projection table for Expectation Maximization
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Name of feature |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Categorical attribute value |
|
Projection coefficient. The representation is sparse; only the non-zero coefficients are returned. |
For EM Anomaly, currently there are no additional views other than the classification views. For the classification view, refer to “Model Detail Views for Classification Algorithms”.
Global Details for Expectation Maximization
The following table describes global details for EM.
Table 36-55 Global Details for Expectation Maximization
Name | Description |
---|---|
|
Indicates whether the model build process has converged to specified tolerance. The possible values are:
|
|
Loglikelihood on the build data |
|
Number of components produced by the model |
|
Number of clusters produced by the model (only available for EM Clustering) |
|
Number of rows used in the build |
|
The random seed value used for the model build |
|
The number of empty components excluded from the model |
Related Topics
36.8.16 Model Detail Views for k-Means
Model detail views specific to k-Means (KM) contain clustering description view (DM$VG
), and scoring information.
Model Views | Description |
---|---|
DM$VA model_name |
Clustering Attribute Statistics |
DM$VC model_name |
k-Means Scoring Centroids |
DM$VD model_name |
Clustering Description |
DM$VG model_name |
Global Name-Value Pairs |
DM$VH model_name |
Clustering Histograms |
DM$VN model_name |
Normalization and Missing Value Handling |
DM$VR model_name |
Clustering Rules |
DM$VS model_name |
Computed Settings |
DM$VW model_name |
Model Build Alerts |
"Model Detail Views for Clustering Algorithms" discusses common model views across clustering algorithms. Global Name-Value Pairs view (DM$VG
), which contains information about Computed Settings view (DM$VS
) and Model Build Alerts view (DM$VW
), and Normalization and Missing Value Handling view (DM$VN
) are addressed individually.
The following views contain information that is specific to k-Means model.
The k-Means Clustering Description view DM$VD
model_name has an additional column:
Name Type
---------------------------------- ----------------------------
DISPERSION BINARY_DOUBLE
Table 36-56 Clustering Description for k-Means
Column Name | Description |
---|---|
|
A measure used to quantify whether a set of observed occurrences are dispersed compared to a standard statistical model. |
The k-Means Scoring Centroids view DM$VC
model_name describes the centroid of each leaf clusters:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
CLUSTER_ID NUMBER
CLUSTER_NAME NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
VALUE BINARY_DOUBLE
Table 36-57 k-Means Scoring Centroids View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
The ID of a cluster in the model |
|
Specifies the label of the cluster |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Categorical attribute value |
|
Specifies the centroid value |
DM$VG
) for k-Means.
Table 36-58 k–Means Global Name-Value Pairs View
Name | Description |
---|---|
|
Indicates whether the model build process has converged to specified tolerance. The following are the possible values:
|
|
Number of rows used in the build |
|
Number of rows removed due to 0 norm. This applies only to models using cosine distance. |
36.8.17 Model Detail Views for O-Cluster
Model detail views specific to O-Cluster (OC) contain information about description view, histograms view, and global view.
The following views contain information that is specific to an O-Cluster model. For the clustering views, refer to "Model Detail Views for Clustering Algorithms". The OC algorithm uses the same descriptive statistics views as Expectation Maximization (EM) and k-Means (KM). The following are the statistics views:
The Cluster Description view (DM$VD
model_name) describes the O-Cluster components. The Cluster Description view has additional fields that specify the split predicate. The view has the following columns:
Name Type
---------------------------------- ----------------------------
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
OPERATOR VARCHAR2(2)
VALUE SYS.XMLTYPE
Table 36-59 Cluster Description View for O-Cluster
Column Name | Description |
---|---|
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Split operator |
|
List of split values |
SYS.XMLTYPE
is as follows:<Element>splitval1</Element>
The OC algorithm uses a Clustering Histograms view (DM$VH
model_name) with different columns than EM and KM. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITON_NAME VARCHAR2(128)
CLUSTER_ID NUMBER
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
BIN_ID NUMBER
LABEL VARCHAR2(4000)
COUNT NUMBER
Table 36-60 Clustering Histograms View for O-Cluster
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Unique identifier of a component |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Unique identifier |
|
Bin label |
|
Bin histogram count |
The following table describes the Global Name-Value Pairs (DM$VG
model_name) view specific to O-Cluster.
Table 36-61 O-Cluster Statistics Information In Model Global View
Name | Description |
---|---|
|
The total number of rows used in the build |
Related Topics
36.8.18 Model Detail Views for CUR Matrix Decomposition
Model detail views for CUR Matrix Decomposition contain information about the scores and ranks of attributes and rows.
CUR Matrix Decomposition models have the following views:
Attribute importance and rank: DM$VC
model_name
Row importance and rank: DM$VR
model_name
Global statistics: DM$VG
The attribute importance and rank view DM$VC
model_name has the following columns:
Name Type
----------------- -----------------
PARTITION_NAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
ATTRIBUTE_IMPORTANCE NUMBER
ATTRIBUTE_RANK NUMBER
Table 36-62 Attribute Importance and Rank View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Attribute name |
|
Attribute subname. The value is null for non-nested columns. |
|
Value of the attribute |
|
Attribute leverage score |
|
Attribute rank based on leverage score |
The view DM$VR
model_name exposes the leverage scores and ranks of all selected rows through a view. This view is created when users decide to perform row importance and the CASE_ID
column is present. The view has the following columns:
Name Type
--------------------- ------------------------
PARTITION_NAME VARCHAR2(128)
CASE_ID Original cid data types,
including NUMBER, VARCHAR2,
DATE, TIMESTAMP,
TIMESTAMP WITH TIME ZONE,
TIMESTAMP WITH LOCAL TIME ZONE
ROW_IMPORTANCE NUMBER
ROW_RANK NUMBER
Table 36-63 Row Importance and Rank View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Case ID. The supported case ID types are the same as that supported for GLM, SVD, and ESA algorithms. |
|
Row leverage score |
|
Row rank based on leverage score |
Table 36-64 CUR Matrix Decomposition Statistics Information In Model Global View.
Name | Description |
---|---|
|
Number of SVD components (SVD rank) |
|
Number of rows used in the model build |
36.8.19 Model Detail Views for Explicit Semantic Analysis
Model detail views specific to Explicit Semantic Analysis (ESA) contain information about attribute statistics and features.
Model Views | Description |
---|---|
DM$VA model_name |
Explicit Semantic Analysis Matrix |
DM$VF model_name |
Explicit Semantic Analysis Features |
DM$VG model_name |
Global Name-Value Pairs |
DM$VN model_name |
Normalization and Missing Value Handling |
DM$VS model_name |
Computed Settings |
DM$VW model_name |
Model Build Alerts |
DM$VX model_name |
Text Features |
-
Explicit Semantic Analysis Matrix (
DM$VA
model_name): This view has different columns for feature extraction and classification. For feature extraction, this view contains model attribute coefficients per feature. For classification, this view contains model attribute coefficients per target class. -
Explicit Semantic Analysis Features (
DM$VF
model_name): This view is applicable only for feature extraction.
The Explicit Semantic Analysis Matrix view (DM$VA
model_name) has the following columns for feature extraction:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
FEATURE_ID NUMBER/VARHCAR2, DATE, TIMESTAMP,
TIMESTAMP WITH TIME ZONE,
TIMESTAMP WITH LOCAL TIME ZONE
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
COEFFICIENT BINARY_DOUBLE
Table 36-65 Explicit Semantic Analysis Matrix for Feature Extraction
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Unique identifier of a feature as it appears in the training data |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Categorical attribute value |
|
A measure of the weight of the attribute with respect to the feature |
The (DM$VA
model_name) view comprises of attribute coefficients for all target classes.
The view Explicit Semantic Analysis Matrix (DM$VA
model_name) has the following columns for classification:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
TARGET_VALUE NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
COEFFICIENT BINARY_DOUBLE
Table 36-66 Explicit Semantic Analysis Matrix for Classification
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Value of the target |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Categorical attribute value |
|
A measure of the weight of the attribute with respect to the feature |
The Explicit Semantic Analysis Features view (DM$VF
model_name) has a unique row for every feature in one view. This feature is helpful if the model was pre-built and the source training data are not available. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
FEATURE_ID NUMBER/VARHCAR2, DATE, TIMESTAMP,
TIMESTAMP WITH TIME ZONE,
TIMESTAMP WITH LOCAL TIME ZONE
Table 36-67 Explicit Semantic Analysis Features for Explicit Semantic Analysis
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Unique identifier of a feature as it appears in the training data |
DM$VG
model_name) specific to ESA.
Table 36-68 Explicit Semantic Analysis Statistics Information In Model Global View
Name | Description |
---|---|
|
The total number of input rows |
|
Number of rows removed by filters |
36.8.20 Model Detail Views for Exponential Smoothing
Model detail views specific to Exponential Smoothing (ESM) include information about the model output, global information about the model, and views that support time series regression.
Exponential Smoothing Forecast view (DM$VP
model_name) displays the outcome of an ESM model. The output contains a set of records, ordered by partition and CASE_ID
, that include the columns given in the Exponential Smoothing Model Output table. CASE_ID
identifies the value's position in the time series. The user-specified CASE_ID
can be a type that represents a numerical or datetime value. For each unique value of PARTITION
, a distinct exponential smoothing model is built. The VALUE
column for each PARTITION
represents the observed or accumulated value of the target at that point in the sequence. The PREDICTION
column is the forecast one step ahead at that point in the sequence. Backcasts are predictions that fall inside the range of the input data. The sequence also includes a user-specified number of values beyond the range of the input data. The VALUE
column is NULL for any sequence value outside the range of input, and PREDICTION
column is the model forecast for that sequence value. Lower and upper boundaries of the forecasts are denoted by the LOWER
and UPPER
columns. For backcasts, LOWER
and UPPER
are NULL. The bounds are based on a confidence interval that the user sets for the prediction.
Table 36-69 Exponential Smoothing Forecast View
Name | Description |
---|---|
PARTITION |
Partition name in a partitioned model |
CASE_ID |
Sequence identifier (datetime or number type) |
VALUE |
Observed or accumulated value |
PREDICTION |
Backcast or Forecast value |
UPPER |
Upper bound of the forecast |
LOWER |
Lower bound of the forecast |
Global Name-Value Pairs view (DM$VG
model_name) includes the model's global information as well as the estimated smoothing constants, estimated initial state, and global diagnostic measures.
Table 36-70 Global Name-Value Pairs View for ESM
Name | Description |
---|---|
|
Negative log-likelihood of model |
|
Smoothing constant |
|
Akaike information criterion |
|
Corrected Akaike information criterion |
|
Average mean square error over user-specified time window |
|
Trend smoothing constant |
|
Bayesian information criterion |
|
Seasonal smoothing constant |
|
Model estimate of value one time interval prior to start of observed series |
|
Model estimate of seasonal effect for season i one time interval prior to start of observed series |
|
Model estimate of trend one time interval prior to start of observed series |
|
Model mean absolute error |
|
Model mean square error |
|
Damping parameter |
|
Model standard error |
|
Model standard deviation of residuals |
Time series regression expands the features that can be included in a time series model and, possibly, increases forecast accuracy. Backcasts and forecasts of time series correlated to the "target" series of interest are included in the build and score views. The build and score views can be fed into a regression technique like Generalized Linear Model.
The Time Series Regression Build view (DM$VR
model_name) depicts the schema for the build view. Each predictor series will have its own column. There can be a maximum of 20 predictor series in the build and score views. The names of the columns are obtained from the EXSM_SERIES_LIST
setting.
Table 36-71 Time Series Regression Build View
Name | Description |
---|---|
PARTITION |
Partition name in a partitioned model |
CASE_ID |
Sequence identifier (datetime or number type) |
target series name |
Observed or accumulated value of target series |
DM$target series |
Backcasted value of target series |
DM$predictor series column name |
Backcasted value of predictor series column. A maximum of 20 predictor series columns can be used. |
The Time Series Regression Score view (DM$VT
model_name) shows the schema for the score view. The schema is the same as in the build view, but the values in the target series name column are NULL
because the future has not yet been observed.
Table 36-72 Time Series Regression Score View
Name | Description |
---|---|
PARTITION |
Partition name in a partitioned model |
CASE_ID |
Sequence identifier (datetime or number type) |
target series name |
|
DM$target series |
Forecasted value of target series |
DM$predictor series column name |
Forecasted value of predictor series column name. A maximum of 20 predictor series columns can be used. |
Related Topics
36.8.21 Model Detail Views for Non-Negative Matrix Factorization
Model detail views specific to Non-Negative Matrix Factorization (NMF) contain information about the encoding H matrix and H inverse matrix.
The views specific to NMF are:
-
Non-Negative Matrix Factorization H Matrix view (
DM$VE
model_name) -
Non-Negative Matrix Factorization Inverse H Matrix view (
DM$VI
model_name)
The view DM$VE
model_name describes the encoding (H) matrix of an NMF model. The FEATURE_NAME
column type may be either NUMBER
or VARCHAR2
. The view has the following columns.
Name Type
------------------- --------------------------
PARTITION_NAME VARCHAR2(128)
FEATURE_ID NUMBER
FEATURE_NAME NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
COEFFICIENT BINARY_DOUBLE
Table 36-73 Non-Negative Matrix Factorization H Matrix View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
The ID of a feature in the model |
|
The name of a feature in the model |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Specifies the value of attribute |
|
The attribute encoding that represents its contribution to the feature |
The view DM$VI
model_view describes the inverse H matrix of an NMF model. The FEATURE_NAME
column type may be either NUMBER
or VARCHAR2
. The view has the following schema:
Name Type
----------------- ------------------------
PARTITION_NAME VARCHAR2(128)
FEATURE_ID NUMBER
FEATURE_NAME NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
COEFFICIENT BINARY_DOUBLE
Table 36-74 Non-Negative Matrix Factorization Inverse H Matrix View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
The ID of a feature in the model |
|
The name of a feature in the model |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Specifies the value of attribute |
|
The attribute encoding that represents its contribution to the feature |
DM$VG
model_name) specific to NMF.
Table 36-75 Global Name-Value Pairs View for NMF
Name | Description |
---|---|
|
Convergence error |
|
Indicates whether the model build process has converged to specified tolerance. The following are the possible values:
|
|
Number of iterations performed during build |
|
Number of rows used in the build input data set |
|
Number of rows used by the build |
36.8.22 Model Detail Views for Singular Value Decomposition
Model detail views specific to Singular Value Decomposition (SVD) contain information about the S matrix, right-singular vectors, and left-singular vectors.
Model Views | Description |
---|---|
DM$VE model_name |
Singular Value Decomposition S Matrix |
DM$VG model_name |
Global Name-Value Pairs |
DM$VN model_name |
Normalization and Missing Value Handling |
DM$VS model_name |
Computed Settings |
DM$VU model_name |
Singular Value Decomposition U Matrix |
DM$VV model_name |
Singular Value Decomposition V Matrix |
DM$VW model_name |
Model Build Alerts |
The Singular Value Decomposition S Matrix view (DM$VE
model_name) leverages the fact that each singular value in the SVD model has a corresponding principal component in the associated Principal Components Analysis (PCA) model to relate a common set of information for both classes of models. For an SVD model, it describes the content of the S matrix. When PCA scoring is selected as a build setting, the variance and percentage cumulative variance for the corresponding principal components are shown as well. The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
FEATURE_ID NUMBER
FEATURE_NAME NUMBER/VARCHAR2
VALUE BINARY_DOUBLE
VARIANCE BINARY_DOUBLE
PCT_CUM_VARIANCE BINARY_DOUBLE
Table 36-76 Singular Value Decomposition S Matrix View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
The ID of a feature in the model |
|
The name of a feature in the model |
|
The matrix entry value |
|
The variance explained by a component. This column is only present for SVD models with setting This column is non-null only if the build data is centered, either manually or because of the following setting: |
|
The percent cumulative variance explained by the components thus far. The components are ranked by the explained variance in descending order. This column is only present for SVD models with setting This column is non-null only if the build data is centered, either manually or because of the following setting: |
The Singular Value Decomposition V Matrix view (DM$VV
model_view) describes the right-singular vectors of an SVD model. For a PCA model it describes the principal components (eigenvectors). The view has the following columns:
Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
FEATURE_ID NUMBER
FEATURE_NAME NUMBER/VARCHAR2
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_VALUE VARCHAR2(4000)
VALUE BINARY_DOUBLE
Table 36-77 Singular Value Decomposition V Matrix View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
The ID of a feature in the model |
|
The name of a feature in the model |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Categorical attribute value. For numerical attributes, |
|
The matrix entry value |
DM$VU
model_name) describes the left-singular vectors of an SVD model. For a PCA model, it describes the projection of the data in the principal components. This view does not exist unless the settings dbms_data_mining.svds_u_matrix_output
is set to dbms_data_mining.svds_u_matrix_enable
. The view has the following columns:Name Type
---------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
CASE_ID NUMBER/VARHCAR2, DATE, TIMESTAMP,
TIMESTAMP WITH TIME ZONE,
TIMESTAMP WITH LOCAL TIME ZONE
FEATURE_ID NUMBER
FEATURE_NAME NUMBER/VARCHAR2
VALUE BINARY_DOUBLE
Table 36-78 Singular Value Decomposition U Matrix View or Projection Data in Principal Components
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Unique identifier of the row in the build data described by the U matrix projection. |
|
The ID of a feature in the model |
|
The name of a feature in the model |
|
The matrix entry value |
Global Details for Singular Value Decomposition
The following table describes the Global Name-Value Pairs view (DM$VG
model_name) specific to a SVD model.
Table 36-79 Global Name-Value Pairs View for Singular Value Decomposition
Name | Description |
---|---|
|
Number of features (components) produced by the model |
|
The total number of rows used in the build |
|
Suggested cutoff that indicates how many of the top computed features capture most of the variance in the model. Using only the features below this cutoff would be a reasonable strategy for dimensionality reduction. |
Related Topics
36.8.23 Model Detail Views for Minimum Description Length
Model detail views specific to Minimum Description Length (MDL) (for calculating attribute importance) contain information about attribute importance models.
The Attribute Importance view (DM$VA
model_name) describes the attribute importance as well as the attribute importance rank. The view has the following columns:
Name Type
----------------------------------------- ----------------------------
PARTITION_NAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
ATTRIBUTE_IMPORTANCE_VALUE BINARY_DOUBLE
ATTRIBUTE_RANK NUMBER
Table 36-80 Attribute Importance View for Minimum Description Length
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Importance value |
|
Rank based on importance |
DM$VG
model_name) specific to MDL.
Table 36-81 Global Name-Value Pairs View for MDL
Name | Description |
---|---|
|
The total number of rows used in the build |
36.8.24 Model Detail Views for Binning
The binning view DM$VB
describes the bin boundaries used in automatic data preparation.
The view has the following columns:
Name Type
-------------------- --------------------
PARTITION_NAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
BIN_ID NUMBER
LOWER_BIN_BOUNDARY BINARY_DOUBLE
UPPER_BIN_BOUNDARY BINARY_DOUBLE
ATTRIBUTE_VALUE VARCHAR2(4000)
Table 36-82 Model Details View for Binning
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Specifies the attribute name |
|
Specifies the attribute subname |
|
Bin ID (or bin identifier) |
|
Numeric lower bin boundary |
|
Numeric upper bin boundary |
|
Categorical value |
36.8.25 Model Detail Views for Global Information
Model detail views for global information contain information about global statistics, alerts, and computed settings.
The Global Name-Value Pairs view (DM$VG
model_name) describes global statistics related to the model build. Examples include the number of rows used in the build, the convergence status, and the model quality metrics. The view has the following columns:
Name Type
------------------- --------------------
PARTITION_NAME VARCHAR2(128)
NAME VARCHAR2(30)
NUMERIC_VALUE NUMBER
STRING_VALUE VARCHAR2(4000)
Table 36-83 Global Name-Value Pairs View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Name of the statistic |
|
Numeric value of the statistic |
|
Categorical value of the statistic |
The Model Build Alerts view (DM$VW
model_name) lists alerts issued during the model build. The view has the following columns:
Name Type
------------------- ----------------------
PARTITION_NAME VARCHAR2(128)
ERROR_NUMBER BINARY_DOUBLE
ERROR_TEXT VARCHAR2(4000)
Table 36-84 Model Build Alerts View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Error number (valid when event is Error) |
|
Error message |
The Computed Settings view (DM$VS
model_name) lists the algorithm computed settings. The view has the following columns:
Name Type
----------------- --------------------
PARTITION_NAME VARCHAR2(128)
SETTING_NAME VARCHAR2(30)
SETTING_VALUE VARCHAR2(4000)
Table 36-85 Computed Settings View
Column Name | Description |
---|---|
|
Partition name in a partitioned model |
|
Name of the setting |
|
Value of the setting |
36.8.26 Model Detail Views for Normalization and Missing Value Handling
The Normalization and Missing Value Handling view DM$VN
describes the normalization parameters used in Automatic Data Preparation (ADP) and the missing value replacement when a NULL
value is encountered. Missing value replacement applies only to the twodimensional columns and does not apply to the nested columns.
The view has the following columns:
Name Type
---------------------- -----------------------
PARTITION_NAME VARCHAR2(128)
ATTRIBUTE_NAME VARCHAR2(128)
ATTRIBUTE_SUBNAME VARCHAR2(4000)
NUMERIC_MISSING_VALUE BINARY_DOUBLE
CATEGORICAL_MISSING_VALUE VARCHAR2(4000)
NORMALIZATION_SHIFT BINARY_DOUBLE
NORMALIZATION_SCALE BINARY_DOUBLE
Table 36-86 Normalization and Missing Value Handling View
Column Name | Description |
---|---|
|
A partition in a partitioned model |
|
Column name |
|
Nested column subname. The value is null for non-nested columns. |
|
Numeric missing value replacement |
|
Categorical missing value replacement |
|
Normalization shift value |
|
Normalization scale value |
36.8.27 Model Detail Views for ONNX Models
You can view the details of an embedding model using the model detail views. The names of the views begin with DM$V.
This section lists the model detail views for embedding models.
36.8.27.1 DM$VJ Model Detail View
The DM$VJ
<model-name> returns a single row containing a JSON object in one
column that contains user-specified metadata of the model.
The view has the following columns:
Name Null? Type
------------------------ -------- ----------------------------
METADATA CLOB
Column Name | Description |
---|---|
|
It is a |
The following table describes the output of the DM$VJ<modle_name>
view of an embedding
model.
Name | Value |
---|---|
METADATA |
The JSON that was specified to the
IMPORT_ONNX_MODEL call for importing the
model.
|
The
following example displays the output of an embedding model. The name of the model
is doc_model
:
SQL> select * from DM$VJdoc_model;
METADATA
--------------------------------------------------------------------------------
{"function":"embedding","embeddingOutput":"embedding","input":{"input":["DATA"]}}
36.8.27.2 DM$VM Model Detail View
The DM$VM
<model-name>
view reports information extracted from the
metadata of the imported ONNX model and its input or output tensors.
The view has the following columns:
Name Type
---------------------------------- ---------------------------
NAME VARCHAR2(4000)
VALUE VARCHAR2(4000)
Table 36-87
Column Name | Description |
---|---|
|
The name of the metadata extracted from the ONNX model. |
|
Indicates a value for the metadata name |
The following table describes the output of the DM$VM<model_name>
view of an embedding
model.
Name | Value |
---|---|
Producer Name | Name of the tools that generated the ONNX files |
Graph Name | Name of the ONNX graph |
Graph Description | Description given to the model |
Version | Version of the model |
Input | Describes the model input mapping |
Output | Reports the vector information with dimension and value type |
The
following example displays the output of an embedding model. The name of the model
is DOC_MODEL
:
SQL> select * from DM$VMdoc_model;
NAME VALUE
---------------------------------------- ----------------------------------------
Producer Name onnx.compose.merge_models
Graph Name g_8_main_graph_main_graph
Graph Description Graph combining g_8_main_graph and main_
graph
g_8_main_graph
main_graph
Version 1
Input[0] input:string[1]
Output[0] embedding:float32[?,384]
6 rows selected.
Related Topics
36.8.27.3 DM$VP Model Detail View
The DM$VP
<model-name> view displays information extracted from parsing the JSON
metadata. The view presents the JSON metadata of the model, including both explicitly
declared properties and system-assigned default values for undeclared ones.
The reported properties are specific to the machine learning model and match the mandatory and optional fields of the JSON metadata.
The view has the following columns:
Name Type
---------------------------------- ---------------------------
NAME VARCHAR2(4000)
VALUE VARCHAR2(4000)
Column Name | Description |
---|---|
NAME |
Displays the JSON parameters |
VALUE |
Indicates the value corresponding to the JSON parameter name value pair |
Note
that this information is already available in the
ALL_MINING_MODEL_ATTRIBUTES
view. The
following example displays all the columns available to you in the
DM$VPdoc_model
view of an
embedding model. In this example, doc_model is the
name of the model.
SQL> select * from DM$VPdoc_model;
NAME VALUE
---------------------------------------- ----------------------------------------
batching False
embeddingOutput embedding