NamedEntityRecognitionModelMetrics

class oci.ai_language.models.NamedEntityRecognitionModelMetrics(**kwargs)

Bases: object

Model level named entity recognition metrics

Methods

__init__(**kwargs) Initializes a new NamedEntityRecognitionModelMetrics object with values from keyword arguments.

Attributes

macro_f1 [Required] Gets the macro_f1 of this NamedEntityRecognitionModelMetrics.
macro_precision [Required] Gets the macro_precision of this NamedEntityRecognitionModelMetrics.
macro_recall [Required] Gets the macro_recall of this NamedEntityRecognitionModelMetrics.
micro_f1 [Required] Gets the micro_f1 of this NamedEntityRecognitionModelMetrics.
micro_precision [Required] Gets the micro_precision of this NamedEntityRecognitionModelMetrics.
micro_recall [Required] Gets the micro_recall of this NamedEntityRecognitionModelMetrics.
weighted_f1 Gets the weighted_f1 of this NamedEntityRecognitionModelMetrics.
weighted_precision Gets the weighted_precision of this NamedEntityRecognitionModelMetrics.
weighted_recall Gets the weighted_recall of this NamedEntityRecognitionModelMetrics.
__init__(**kwargs)

Initializes a new NamedEntityRecognitionModelMetrics object with values from keyword arguments. The following keyword arguments are supported (corresponding to the getters/setters of this class):

Parameters:
  • micro_f1 (float) – The value to assign to the micro_f1 property of this NamedEntityRecognitionModelMetrics.
  • micro_precision (float) – The value to assign to the micro_precision property of this NamedEntityRecognitionModelMetrics.
  • micro_recall (float) – The value to assign to the micro_recall property of this NamedEntityRecognitionModelMetrics.
  • macro_f1 (float) – The value to assign to the macro_f1 property of this NamedEntityRecognitionModelMetrics.
  • macro_precision (float) – The value to assign to the macro_precision property of this NamedEntityRecognitionModelMetrics.
  • macro_recall (float) – The value to assign to the macro_recall property of this NamedEntityRecognitionModelMetrics.
  • weighted_f1 (float) – The value to assign to the weighted_f1 property of this NamedEntityRecognitionModelMetrics.
  • weighted_precision (float) – The value to assign to the weighted_precision property of this NamedEntityRecognitionModelMetrics.
  • weighted_recall (float) – The value to assign to the weighted_recall property of this NamedEntityRecognitionModelMetrics.
macro_f1

[Required] Gets the macro_f1 of this NamedEntityRecognitionModelMetrics. F1-score, is a measure of a model’s accuracy on a dataset

Returns:The macro_f1 of this NamedEntityRecognitionModelMetrics.
Return type:float
macro_precision

[Required] Gets the macro_precision of this NamedEntityRecognitionModelMetrics. Precision refers to the number of true positives divided by the total number of positive predictions (i.e., the number of true positives plus the number of false positives)

Returns:The macro_precision of this NamedEntityRecognitionModelMetrics.
Return type:float
macro_recall

[Required] Gets the macro_recall of this NamedEntityRecognitionModelMetrics. Measures the model’s ability to predict actual positive classes. It is the ratio between the predicted true positives and what was actually tagged. The recall metric reveals how many of the predicted classes are correct.

Returns:The macro_recall of this NamedEntityRecognitionModelMetrics.
Return type:float
micro_f1

[Required] Gets the micro_f1 of this NamedEntityRecognitionModelMetrics. F1-score, is a measure of a model’s accuracy on a dataset

Returns:The micro_f1 of this NamedEntityRecognitionModelMetrics.
Return type:float
micro_precision

[Required] Gets the micro_precision of this NamedEntityRecognitionModelMetrics. Precision refers to the number of true positives divided by the total number of positive predictions (i.e., the number of true positives plus the number of false positives)

Returns:The micro_precision of this NamedEntityRecognitionModelMetrics.
Return type:float
micro_recall

[Required] Gets the micro_recall of this NamedEntityRecognitionModelMetrics. Measures the model’s ability to predict actual positive classes. It is the ratio between the predicted true positives and what was actually tagged. The recall metric reveals how many of the predicted classes are correct.

Returns:The micro_recall of this NamedEntityRecognitionModelMetrics.
Return type:float
weighted_f1

Gets the weighted_f1 of this NamedEntityRecognitionModelMetrics. F1-score, is a measure of a model’s accuracy on a dataset

Returns:The weighted_f1 of this NamedEntityRecognitionModelMetrics.
Return type:float
weighted_precision

Gets the weighted_precision of this NamedEntityRecognitionModelMetrics. Precision refers to the number of true positives divided by the total number of positive predictions (i.e., the number of true positives plus the number of false positives)

Returns:The weighted_precision of this NamedEntityRecognitionModelMetrics.
Return type:float
weighted_recall

Gets the weighted_recall of this NamedEntityRecognitionModelMetrics. Measures the model’s ability to predict actual positive classes. It is the ratio between the predicted true positives and what was actually tagged. The recall metric reveals how many of the predicted classes are correct.

Returns:The weighted_recall of this NamedEntityRecognitionModelMetrics.
Return type:float