pyspark.ml.classification.
NaiveBayes
Naive Bayes Classifiers. It supports both Multinomial and Bernoulli NB. Multinomial NB can handle finitely supported discrete data. For example, by converting documents into TF-IDF vectors, it can be used for document classification. By making every vector a binary (0/1) data, it can also be used as Bernoulli NB.
The input feature values for Multinomial NB and Bernoulli NB must be nonnegative. Since 3.0.0, it supports Complement NB which is an adaptation of the Multinomial NB. Specifically, Complement NB uses statistics from the complement of each class to compute the model’s coefficients. The inventors of Complement NB show empirically that the parameter estimates for CNB are more stable than those for Multinomial NB. Like Multinomial NB, the input feature values for Complement NB must be nonnegative. Since 3.0.0, it also supports Gaussian NB. which can handle continuous data.
New in version 1.5.0.
Examples
>>> from pyspark.sql import Row >>> from pyspark.ml.linalg import Vectors >>> df = spark.createDataFrame([ ... Row(label=0.0, weight=0.1, features=Vectors.dense([0.0, 0.0])), ... Row(label=0.0, weight=0.5, features=Vectors.dense([0.0, 1.0])), ... Row(label=1.0, weight=1.0, features=Vectors.dense([1.0, 0.0]))]) >>> nb = NaiveBayes(smoothing=1.0, modelType="multinomial", weightCol="weight") >>> model = nb.fit(df) >>> model.setFeaturesCol("features") NaiveBayesModel... >>> model.getSmoothing() 1.0 >>> model.pi DenseVector([-0.81..., -0.58...]) >>> model.theta DenseMatrix(2, 2, [-0.91..., -0.51..., -0.40..., -1.09...], 1) >>> model.sigma DenseMatrix(0, 0, [...], ...) >>> test0 = sc.parallelize([Row(features=Vectors.dense([1.0, 0.0]))]).toDF() >>> model.predict(test0.head().features) 1.0 >>> model.predictRaw(test0.head().features) DenseVector([-1.72..., -0.99...]) >>> model.predictProbability(test0.head().features) DenseVector([0.32..., 0.67...]) >>> result = model.transform(test0).head() >>> result.prediction 1.0 >>> result.probability DenseVector([0.32..., 0.67...]) >>> result.rawPrediction DenseVector([-1.72..., -0.99...]) >>> test1 = sc.parallelize([Row(features=Vectors.sparse(2, [0], [1.0]))]).toDF() >>> model.transform(test1).head().prediction 1.0 >>> nb_path = temp_path + "/nb" >>> nb.save(nb_path) >>> nb2 = NaiveBayes.load(nb_path) >>> nb2.getSmoothing() 1.0 >>> model_path = temp_path + "/nb_model" >>> model.save(model_path) >>> model2 = NaiveBayesModel.load(model_path) >>> model.pi == model2.pi True >>> model.theta == model2.theta True >>> model.transform(test0).take(1) == model2.transform(test0).take(1) True >>> nb = nb.setThresholds([0.01, 10.00]) >>> model3 = nb.fit(df) >>> result = model3.transform(test0).head() >>> result.prediction 0.0 >>> nb3 = NaiveBayes().setModelType("gaussian") >>> model4 = nb3.fit(df) >>> model4.getModelType() 'gaussian' >>> model4.sigma DenseMatrix(2, 2, [0.0, 0.25, 0.0, 0.0], 1) >>> nb5 = NaiveBayes(smoothing=1.0, modelType="complement", weightCol="weight") >>> model5 = nb5.fit(df) >>> model5.getModelType() 'complement' >>> model5.theta DenseMatrix(2, 2, [...], 1) >>> model5.sigma DenseMatrix(0, 0, [...], ...)
Methods
clear(param)
clear
Clears a param from the param map if it has been explicitly set.
copy([extra])
copy
Creates a copy of this instance with the same uid and some extra params.
explainParam(param)
explainParam
Explains a single param and returns its name, doc, and optional default value and user-supplied value in a string.
explainParams()
explainParams
Returns the documentation of all params with their optionally default values and user-supplied values.
extractParamMap([extra])
extractParamMap
Extracts the embedded default param values and user-supplied values, and then merges them with extra values from input into a flat param map, where the latter value is used if there exist conflicts, i.e., with ordering: default param values < user-supplied values < extra.
fit(dataset[, params])
fit
Fits a model to the input dataset with optional parameters.
fitMultiple(dataset, paramMaps)
fitMultiple
Fits a model to the input dataset for each param map in paramMaps.
getFeaturesCol()
getFeaturesCol
Gets the value of featuresCol or its default value.
getLabelCol()
getLabelCol
Gets the value of labelCol or its default value.
getModelType()
getModelType
Gets the value of modelType or its default value.
getOrDefault(param)
getOrDefault
Gets the value of a param in the user-supplied param map or its default value.
getParam(paramName)
getParam
Gets a param by its name.
getPredictionCol()
getPredictionCol
Gets the value of predictionCol or its default value.
getProbabilityCol()
getProbabilityCol
Gets the value of probabilityCol or its default value.
getRawPredictionCol()
getRawPredictionCol
Gets the value of rawPredictionCol or its default value.
getSmoothing()
getSmoothing
Gets the value of smoothing or its default value.
getThresholds()
getThresholds
Gets the value of thresholds or its default value.
getWeightCol()
getWeightCol
Gets the value of weightCol or its default value.
hasDefault(param)
hasDefault
Checks whether a param has a default value.
hasParam(paramName)
hasParam
Tests whether this instance contains a param with a given (string) name.
isDefined(param)
isDefined
Checks whether a param is explicitly set by user or has a default value.
isSet(param)
isSet
Checks whether a param is explicitly set by user.
load(path)
load
Reads an ML instance from the input path, a shortcut of read().load(path).
read()
read
Returns an MLReader instance for this class.
save(path)
save
Save this ML instance to the given path, a shortcut of ‘write().save(path)’.
set(param, value)
set
Sets a parameter in the embedded param map.
setFeaturesCol(value)
setFeaturesCol
Sets the value of featuresCol.
featuresCol
setLabelCol(value)
setLabelCol
Sets the value of labelCol.
labelCol
setModelType(value)
setModelType
Sets the value of modelType.
modelType
setParams(self, \*[, featuresCol, labelCol, …])
setParams
Sets params for Naive Bayes.
setPredictionCol(value)
setPredictionCol
Sets the value of predictionCol.
predictionCol
setProbabilityCol(value)
setProbabilityCol
Sets the value of probabilityCol.
probabilityCol
setRawPredictionCol(value)
setRawPredictionCol
Sets the value of rawPredictionCol.
rawPredictionCol
setSmoothing(value)
setSmoothing
Sets the value of smoothing.
smoothing
setThresholds(value)
setThresholds
Sets the value of thresholds.
thresholds
setWeightCol(value)
setWeightCol
Sets the value of weightCol.
weightCol
write()
write
Returns an MLWriter instance for this ML instance.
Attributes
params
Returns all params ordered by name.
Methods Documentation
Creates a copy of this instance with the same uid and some extra params. This implementation first calls Params.copy and then make a copy of the companion Java pipeline component with extra params. So both the Python wrapper and the Java pipeline component get copied.
Extra parameters to copy to the new instance
JavaParams
Copy of this instance
extra param values
merged param map
New in version 1.3.0.
pyspark.sql.DataFrame
input dataset.
an optional param map that overrides embedded params. If a list/tuple of param maps is given, this calls fit on each param map and returns a list of models.
Transformer
fitted model(s)
New in version 2.3.0.
collections.abc.Sequence
A Sequence of param maps.
_FitMultipleIterator
A thread safe iterable which contains one model for each param map. Each call to next(modelIterator) will return (index, model) where model was fit using paramMaps[index]. index values may not be sequential.
Gets the value of a param in the user-supplied param map or its default value. Raises an error if neither is set.
New in version 3.0.0.
Attributes Documentation
Returns all params ordered by name. The default implementation uses dir() to get all attributes of type Param.
dir()
Param