AggregateClassificationMetrics class
Aggregate metrics for classification/classifier models.
For multi-class models, the metrics are either macro-averaged or micro-averaged. When macro-averaged, the metrics are calculated for each label and then an unweighted average is taken of those values. When micro-averaged, the metric is calculated globally by counting the total number of correctly predicted rows.
Constructors
- AggregateClassificationMetrics({double? accuracy, double? f1Score, double? logLoss, double? precision, double? recall, double? rocAuc, double? threshold})
- AggregateClassificationMetrics.fromJson(Map json_)
Properties
- accuracy ↔ double?
- 
  Accuracy is the fraction of predictions given the correct label.
  getter/setter pair
- f1Score ↔ double?
- 
  The F1 score is an average of recall and precision.
  getter/setter pair
- hashCode → int
- 
  The hash code for this object.
  no setterinherited
- logLoss ↔ double?
- 
  Logarithmic Loss.
  getter/setter pair
- precision ↔ double?
- 
  Precision is the fraction of actual positive predictions that had positive
actual labels.
  getter/setter pair
- recall ↔ double?
- 
  Recall is the fraction of actual positive labels that were given a
positive prediction.
  getter/setter pair
- rocAuc ↔ double?
- 
  Area Under a ROC Curve.
  getter/setter pair
- runtimeType → Type
- 
  A representation of the runtime type of the object.
  no setterinherited
- threshold ↔ double?
- 
  Threshold at which the metrics are computed.
  getter/setter pair
Methods
- 
  noSuchMethod(Invocation invocation) → dynamic 
- 
  Invoked when a nonexistent method or property is accessed.
  inherited
- 
  toJson() → Map< String, dynamic> 
- 
  toString() → String 
- 
  A string representation of this object.
  inherited
Operators
- 
  operator ==(Object other) → bool 
- 
  The equality operator.
  inherited