Interface | Description |
---|---|
LogisticRegressionSummary |
Abstraction for Logistic Regression Results for a given model.
|
LogisticRegressionTrainingSummary |
Abstraction for multinomial Logistic Regression Training results.
|
Class | Description |
---|---|
BinaryLogisticRegressionSummary |
:: Experimental ::
Binary Logistic regression results for a given model.
|
BinaryLogisticRegressionTrainingSummary |
:: Experimental ::
Logistic regression training results.
|
ClassificationModel<FeaturesType,M extends ClassificationModel<FeaturesType,M>> |
:: DeveloperApi ::
|
Classifier<FeaturesType,E extends Classifier<FeaturesType,E,M>,M extends ClassificationModel<FeaturesType,M>> |
:: DeveloperApi ::
|
DecisionTreeClassificationModel |
:: Experimental ::
Decision tree model for classification. |
DecisionTreeClassifier |
:: Experimental ::
Decision tree learning algorithm
for classification. |
GBTClassificationModel |
:: Experimental ::
Gradient-Boosted Trees (GBTs)
model for classification. |
GBTClassifier |
:: Experimental ::
Gradient-Boosted Trees (GBTs)
learning algorithm for classification. |
LabelConverter |
Label to vector converter.
|
LogisticAggregator |
LogisticAggregator computes the gradient and loss for binary logistic loss function, as used
in binary classification for samples in sparse or dense vector in a online fashion.
|
LogisticCostFun |
LogisticCostFun implements Breeze's DiffFunction[T] for a multinomial logistic loss function,
as used in multi-class classification (it is also used in binary logistic regression).
|
LogisticRegression |
:: Experimental ::
Logistic regression.
|
LogisticRegressionModel |
:: Experimental ::
Model produced by
LogisticRegression . |
MultilayerPerceptronClassificationModel |
:: Experimental ::
Classification model based on the Multilayer Perceptron.
|
MultilayerPerceptronClassifier |
:: Experimental ::
Classifier trainer based on the Multilayer Perceptron.
|
NaiveBayes |
:: Experimental ::
Naive Bayes Classifiers.
|
NaiveBayesModel |
:: Experimental ::
Model produced by
NaiveBayes
param: pi log of class priors, whose dimension is C (number of classes)
param: theta log of class conditional probabilities, whose dimension is C (number of classes)
by D (number of features) |
OneVsRest |
:: Experimental ::
|
OneVsRestModel |
:: Experimental ::
Model produced by
OneVsRest . |
ProbabilisticClassificationModel<FeaturesType,M extends ProbabilisticClassificationModel<FeaturesType,M>> |
:: DeveloperApi ::
|
ProbabilisticClassifier<FeaturesType,E extends ProbabilisticClassifier<FeaturesType,E,M>,M extends ProbabilisticClassificationModel<FeaturesType,M>> |
:: DeveloperApi ::
|
RandomForestClassificationModel |
:: Experimental ::
Random Forest model for classification. |
RandomForestClassifier |
:: Experimental ::
Random Forest learning algorithm for
classification. |