一尘不染

如何在PySpark中创建自定义估算器

python

我正在尝试Estimator在PySpark MLlib中构建一个简单的自定义。我在这里可以编写自定义的Transformer,但是我不确定如何在.NET上执行此操作Estimator。我也不明白做什么@keyword_only,为什么我需要这么多的设置方法和获取方法。Scikit-learn似乎有一个适用于自定义模型的文档(请参阅此处,但PySpark没有。

示例模型的伪代码:

class NormalDeviation():
    def __init__(self, threshold = 3):
    def fit(x, y=None):
       self.model = {'mean': x.mean(), 'std': x.std()]
    def predict(x):
       return ((x-self.model['mean']) > self.threshold * self.model['std'])
    def decision_function(x): # does ml-lib support this?

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2020-12-20

共1个答案

一尘不染

一般来说,没有文档,因为对于Spark 1.6 / 2.0,大多数相关API都不打算公开。它应该在Spark 2.1.0中更改(请参阅SPARK-7146)。

API是比较复杂的,因为它必须遵循特定的惯例,以使给定TransformerEstimator兼容的PipelineAPI。对于某些功能,例如读写和网格搜索,可能需要其中一些方法。其他,例如keyword_only,只是简单的帮手,并非严格要求。

假设您已经为平均参数定义了以下混合:

from pyspark.ml.pipeline import Estimator, Model, Pipeline
from pyspark.ml.param.shared import *
from pyspark.sql.functions import avg, stddev_samp


class HasMean(Params):

    mean = Param(Params._dummy(), "mean", "mean", 
        typeConverter=TypeConverters.toFloat)

    def __init__(self):
        super(HasMean, self).__init__()

    def setMean(self, value):
        return self._set(mean=value)

    def getMean(self):
        return self.getOrDefault(self.mean)

标准偏差参数:

class HasStandardDeviation(Params):

    standardDeviation = Param(Params._dummy(),
        "standardDeviation", "standardDeviation", 
        typeConverter=TypeConverters.toFloat)

    def __init__(self):
        super(HasStandardDeviation, self).__init__()

    def setStddev(self, value):
        return self._set(standardDeviation=value)

    def getStddev(self):
        return self.getOrDefault(self.standardDeviation)

和阈值:

class HasCenteredThreshold(Params):

    centeredThreshold = Param(Params._dummy(),
            "centeredThreshold", "centeredThreshold",
            typeConverter=TypeConverters.toFloat)

    def __init__(self):
        super(HasCenteredThreshold, self).__init__()

    def setCenteredThreshold(self, value):
        return self._set(centeredThreshold=value)

    def getCenteredThreshold(self):
        return self.getOrDefault(self.centeredThreshold)

您可以创建以下基本Estimator内容:

from pyspark.ml.util import DefaultParamsReadable, DefaultParamsWritable 
from pyspark import keyword_only  

class NormalDeviation(Estimator, HasInputCol, 
        HasPredictionCol, HasCenteredThreshold,
        # Available in PySpark >= 2.3.0 
        # Credits https://stackoverflow.com/a/52467470
        # by https://stackoverflow.com/users/234944/benjamin-manns
        DefaultParamsReadable, DefaultParamsWritable):

    @keyword_only
    def __init__(self, inputCol=None, predictionCol=None, centeredThreshold=1.0):
        super(NormalDeviation, self).__init__()
        kwargs = self._input_kwargs
        self.setParams(**kwargs)

    # Required in Spark >= 3.0
    def setInputCol(self, value):
        """
        Sets the value of :py:attr:`inputCol`.
        """
        return self._set(inputCol=value)

    # Required in Spark >= 3.0
    def setPredictionCol(self, value):
        """
        Sets the value of :py:attr:`predictionCol`.
        """
        return self._set(predictionCol=value)

    @keyword_only
    def setParams(self, inputCol=None, predictionCol=None, centeredThreshold=1.0):
        kwargs = self._input_kwargs
        return self._set(**kwargs)        

    def _fit(self, dataset):
        c = self.getInputCol()
        mu, sigma = dataset.agg(avg(c), stddev_samp(c)).first()
        return NormalDeviationModel(
            inputCol=c, mean=mu, standardDeviation=sigma, 
            centeredThreshold=self.getCenteredThreshold(),
            predictionCol=self.getPredictionCol())


class NormalDeviationModel(Model, HasInputCol, HasPredictionCol,
        HasMean, HasStandardDeviation, HasCenteredThreshold,
        DefaultParamsReadable, DefaultParamsWritable):

    @keyword_only
    def __init__(self, inputCol=None, predictionCol=None,
                mean=None, standardDeviation=None,
                centeredThreshold=None):
        super(NormalDeviationModel, self).__init__()
        kwargs = self._input_kwargs
        self.setParams(**kwargs)  

    @keyword_only
    def setParams(self, inputCol=None, predictionCol=None,
                mean=None, standardDeviation=None,
                centeredThreshold=None):
        kwargs = self._input_kwargs
        return self._set(**kwargs)           

    def _transform(self, dataset):
        x = self.getInputCol()
        y = self.getPredictionCol()
        threshold = self.getCenteredThreshold()
        mu = self.getMean()
        sigma = self.getStddev()

        return dataset.withColumn(y, (dataset[x] - mu) > threshold * sigma)     

最后,它可以按如下方式使用:

df = sc.parallelize([(1, 2.0), (2, 3.0), (3, 0.0), (4, 99.0)]).toDF(["id", "x"])

normal_deviation = NormalDeviation().setInputCol("x").setCenteredThreshold(1.0)
model  = Pipeline(stages=[normal_deviation]).fit(df)

model.transform(df).show()
## +---+----+----------+
## | id|   x|prediction|
## +---+----+----------+
## |  1| 2.0|     false|
## |  2| 3.0|     false|
## |  3| 0.0|     false|
## |  4|99.0|      true|
## +---+----+----------+
2020-12-20