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  • Spark机器学习基础-特征工程

    对连续值处理

    0.binarizer/二值化

    from __future__ import print_function
    from pyspark.sql import SparkSession
    from pyspark.ml.feature import Binarizer#ml相对于mllib更全一点,更新一点
    

      

    spark = SparkSession
            .builder
            .appName("BinarizerExample")
            .getOrCreate()
            
    continuousDataFrame = spark.createDataFrame([
        (0, 1.1),
        (1, 8.5),
        (2, 5.2)
    ], ["id", "feature"])
    
    binarizer = Binarizer(threshold=5.1, inputCol="feature", outputCol="binarized_feature")
    
    binarizedDataFrame = binarizer.transform(continuousDataFrame)
    
    print("Binarizer output with Threshold = %f" % binarizer.getThreshold())
    binarizedDataFrame.show()
    
    spark.stop()
    

      结果:

    Binarizer output with Threshold = 5.100000
    +---+-------+-----------------+
    | id|feature|binarized_feature|
    +---+-------+-----------------+
    |  0|    1.1|              0.0|
    |  1|    8.5|              1.0|
    |  2|    5.2|              1.0|
    +---+-------+-----------------+

    1.按照给定边界离散化

    from __future__ import print_function
    from pyspark.sql import SparkSession
    from pyspark.ml.feature import Bucketizer
    
    spark = SparkSession
        .builder
        .appName("BucketizerExample")
        .getOrCreate()
    
    splits = [-float("inf"), -0.5, 0.0, 0.5, float("inf")]#-float("inf"):指的是负无穷
    
    data = [(-999.9,), (-0.5,), (-0.3,), (0.0,), (0.2,), (999.9,)]
    dataFrame = spark.createDataFrame(data, ["features"])
    
    bucketizer = Bucketizer(splits=splits, inputCol="features", outputCol="bucketedFeatures")
    
    # 按照给定的边界进行分桶
    bucketedData = bucketizer.transform(dataFrame)
    
    print("Bucketizer output with %d buckets" % (len(bucketizer.getSplits())-1))
    bucketedData.show()
    
    spark.stop()
    

      结果:

    Bucketizer output with 4 buckets
    +--------+----------------+
    |features|bucketedFeatures|
    +--------+----------------+
    |  -999.9|             0.0|
    |    -0.5|             1.0|
    |    -0.3|             1.0|
    |     0.0|             2.0|
    |     0.2|             2.0|
    |   999.9|             3.0|
    +--------+----------------+

    2.quantile_discretizer/按分位数离散化

    from __future__ import print_function
    from pyspark.ml.feature import QuantileDiscretizer
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("QuantileDiscretizerExample")
        .getOrCreate()
    
    data = [(0, 18.0), (1, 19.0), (2, 8.0), (3, 5.0), (4, 2.2), (5, 9.2), (6, 14.4)]
    df = spark.createDataFrame(data, ["id", "hour"])
    df = df.repartition(1)#数据量小设置为1个分区,这样不出错!数据量大的话可以设置为多个分区。
    
    # 分成3个桶进行离散化
    discretizer = QuantileDiscretizer(numBuckets=3, inputCol="hour", outputCol="result")
    
    result = discretizer.fit(df).transform(df)
    result.show()
    
    spark.stop()
    

      结果:

    +---+----+------+
    | id|hour|result|
    +---+----+------+
    |  0|18.0|   2.0|
    |  1|19.0|   2.0|
    |  2| 8.0|   1.0|
    |  3| 5.0|   0.0|
    |  4| 2.2|   0.0|
    |  5| 9.2|   1.0|
    |  6|14.4|   2.0|
    +---+----+------+

    3.最大最小值幅度缩放

    from __future__ import print_function
    from pyspark.ml.feature import MaxAbsScaler
    from pyspark.ml.linalg import Vectors
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("MaxAbsScalerExample")
        .getOrCreate()
    
    dataFrame = spark.createDataFrame([
        (0, Vectors.dense([1.0, 0.1, -8.0]),),#dense表示稠密向量
        (1, Vectors.dense([2.0, 1.0, -4.0]),),
        (2, Vectors.dense([4.0, 10.0, 8.0]),)
    ], ["id", "features"])
    
    scaler = MaxAbsScaler(inputCol="features", outputCol="scaledFeatures")#最大最小值用于缩放
    
    # 计算最大最小值用于缩放
    scalerModel = scaler.fit(dataFrame)#fit与transform分开写,因为fit的数据还要用于测试集的变换
    
    # 缩放幅度到[-1, 1]之间
    scaledData = scalerModel.transform(dataFrame)
    scaledData.select("features", "scaledFeatures").show()
    
    spark.stop()
    

     结果:

    +--------------+----------------+
    |      features|  scaledFeatures|
    +--------------+----------------+
    |[1.0,0.1,-8.0]|[0.25,0.01,-1.0]|
    |[2.0,1.0,-4.0]|  [0.5,0.1,-0.5]|
    |[4.0,10.0,8.0]|   [1.0,1.0,1.0]|
    +--------------+----------------+

    4.标准化

    from __future__ import print_function
    from pyspark.ml.feature import StandardScaler
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("StandardScalerExample")
        .getOrCreate()
    
    dataFrame = spark.read.format("libsvm").load("data/mllib/sample_libsvm_data.txt")#libsvm数据格式,适用于存储稀疏数据: [label] [index1]:[value1] [index2]:[value2] …
    scaler = StandardScaler(inputCol="features", outputCol="scaledFeatures",
                            withStd=True, withMean=False)
    
    # 计算均值方差等参数
    scalerModel = scaler.fit(dataFrame)
    
    # 标准化
    scaledData = scalerModel.transform(dataFrame)
    scaledData.show()
    
    spark.stop()
    
    +-----+--------------------+--------------------+
    |label|            features|      scaledFeatures|
    +-----+--------------------+--------------------+
    |  0.0|(692,[127,128,129...|(692,[127,128,129...|
    |  1.0|(692,[158,159,160...|(692,[158,159,160...|
    |  1.0|(692,[124,125,126...|(692,[124,125,126...|
    |  1.0|(692,[152,153,154...|(692,[152,153,154...|
    |  1.0|(692,[151,152,153...|(692,[151,152,153...|
    |  0.0|(692,[129,130,131...|(692,[129,130,131...|
    |  1.0|(692,[158,159,160...|(692,[158,159,160...|
    |  1.0|(692,[99,100,101,...|(692,[99,100,101,...|
    |  0.0|(692,[154,155,156...|(692,[154,155,156...|
    |  0.0|(692,[127,128,129...|(692,[127,128,129...|
    |  1.0|(692,[154,155,156...|(692,[154,155,156...|
    |  0.0|(692,[153,154,155...|(692,[153,154,155...|
    |  0.0|(692,[151,152,153...|(692,[151,152,153...|
    |  1.0|(692,[129,130,131...|(692,[129,130,131...|
    |  0.0|(692,[154,155,156...|(692,[154,155,156...|
    |  1.0|(692,[150,151,152...|(692,[150,151,152...|
    |  0.0|(692,[124,125,126...|(692,[124,125,126...|
    |  0.0|(692,[152,153,154...|(692,[152,153,154...|
    |  1.0|(692,[97,98,99,12...|(692,[97,98,99,12...|
    |  1.0|(692,[124,125,126...|(692,[124,125,126...|
    +-----+--------------------+--------------------+
    only showing top 20 rows
    
    from __future__ import print_function
    from pyspark.ml.feature import StandardScaler
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("StandardScalerExample")
        .getOrCreate()
        
    dataFrame = spark.createDataFrame([
        (0, Vectors.dense([1.0, 0.1, -8.0]),),
        (1, Vectors.dense([2.0, 1.0, -4.0]),),
        (2, Vectors.dense([4.0, 10.0, 8.0]),)
    ], ["id", "features"])
    
    # 计算均值方差等参数
    scalerModel = scaler.fit(dataFrame)
    
    # 标准化
    scaledData = scalerModel.transform(dataFrame)
    scaledData.show()
    
    spark.stop()
    

      结果:

    +---+--------------+--------------------+
    | id|      features|      scaledFeatures|
    +---+--------------+--------------------+
    |  0|[1.0,0.1,-8.0]|[0.65465367070797...|
    |  1|[2.0,1.0,-4.0]|[1.30930734141595...|
    |  2|[4.0,10.0,8.0]|[2.61861468283190...|
    +---+--------------+--------------------+ 

    5.添加多项式特征

    from __future__ import print_function
    from pyspark.ml.feature import PolynomialExpansion
    from pyspark.ml.linalg import Vectors
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("PolynomialExpansionExample")
        .getOrCreate()
    
    df = spark.createDataFrame([
        (Vectors.dense([2.0, 1.0]),),
        (Vectors.dense([0.0, 0.0]),),
        (Vectors.dense([3.0, -1.0]),)
    ], ["features"])
    
    polyExpansion = PolynomialExpansion(degree=3, inputCol="features", outputCol="polyFeatures")
    polyDF = polyExpansion.transform(df)
    
    polyDF.show(truncate=False)
    
    spark.stop()
    

      结果:

    +----------+------------------------------------------+
    |features  |polyFeatures                              |
    +----------+------------------------------------------+
    |[2.0,1.0] |[2.0,4.0,8.0,1.0,2.0,4.0,1.0,2.0,1.0]     |
    |[0.0,0.0] |[0.0,0.0,0.0,0.0,0.0,0.0,0.0,0.0,0.0]     |
    |[3.0,-1.0]|[3.0,9.0,27.0,-1.0,-3.0,-9.0,1.0,3.0,-1.0]|
    +----------+------------------------------------------+
    

    对离散型处理

    0.独热向量编码

    from __future__ import print_function
    from pyspark.ml.feature import OneHotEncoder, StringIndexer
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("OneHotEncoderExample")
        .getOrCreate()
    
    df = spark.createDataFrame([
        (0, "a"),
        (1, "b"),
        (2, "c"),
        (3, "a"),
        (4, "a"),
        (5, "c")
    ], ["id", "category"])
    
    stringIndexer = StringIndexer(inputCol="category", outputCol="categoryIndex")#类别编码:出现频次越低,数值越大
    model = stringIndexer.fit(df)
    indexed = model.transform(df)
    
    encoder = OneHotEncoder(inputCol="categoryIndex", outputCol="categoryVec")
    encoded = encoder.transform(indexed)
    encoded.show()
    
    spark.stop()
    

      结果:

    +---+--------+-------------+-------------+
    | id|category|categoryIndex|  categoryVec|
    +---+--------+-------------+-------------+
    |  0|       a|          0.0|(2,[0],[1.0])|
    |  1|       b|          2.0|    (2,[],[])|
    |  2|       c|          1.0|(2,[1],[1.0])|
    |  3|       a|          0.0|(2,[0],[1.0])|
    |  4|       a|          0.0|(2,[0],[1.0])|
    |  5|       c|          1.0|(2,[1],[1.0])|
    +---+--------+-------------+-------------+

    对文本型处理

    0.去停用词

    from __future__ import print_function
    from pyspark.ml.feature import StopWordsRemover
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("StopWordsRemoverExample")
        .getOrCreate()
    
    sentenceData = spark.createDataFrame([
        (0, ["I", "saw", "the", "red", "balloon"]),
        (1, ["Mary", "had", "a", "little", "lamb"])
    ], ["id", "raw"])
    
    remover = StopWordsRemover(inputCol="raw", outputCol="filtered")
    remover.transform(sentenceData).show(truncate=False)#truncate=False表示没有做截断,长的话可以试着截断观看结果
    
    spark.stop()
    

      结果:

    +---+----------------------------+--------------------+
    |id |raw                         |filtered            |
    +---+----------------------------+--------------------+
    |0  |[I, saw, the, red, balloon] |[saw, red, balloon] |
    |1  |[Mary, had, a, little, lamb]|[Mary, little, lamb]|
    +---+----------------------------+--------------------+

    1.Tokenizer

    from __future__ import print_function
    from pyspark.ml.feature import Tokenizer, RegexTokenizer
    from pyspark.sql.functions import col, udf
    from pyspark.sql.types import IntegerType
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("TokenizerExample")
        .getOrCreate()
    
    sentenceDataFrame = spark.createDataFrame([
        (0, "Hi I heard about Spark"),
        (1, "I wish Java could use case classes"),
        (2, "Logistic,regression,models,are,neat")
    ], ["id", "sentence"])
    
    tokenizer = Tokenizer(inputCol="sentence", outputCol="words")
    
    regexTokenizer = RegexTokenizer(inputCol="sentence", outputCol="words", pattern="\W")#干掉空格部分,保留非空格部分
    
    countTokens = udf(lambda words: len(words), IntegerType())
    
    tokenized = tokenizer.transform(sentenceDataFrame)
    tokenized.select("sentence", "words")
        .withColumn("tokens", countTokens(col("words"))).show(truncate=False)
    
    regexTokenized = regexTokenizer.transform(sentenceDataFrame)
    regexTokenized.select("sentence", "words") 
        .withColumn("tokens", countTokens(col("words"))).show(truncate=False)
    
    spark.stop()
    

      结果:

    +-----------------------------------+------------------------------------------+------+
    |sentence                           |words                                     |tokens|
    +-----------------------------------+------------------------------------------+------+
    |Hi I heard about Spark             |[hi, i, heard, about, spark]              |5     |
    |I wish Java could use case classes |[i, wish, java, could, use, case, classes]|7     |
    |Logistic,regression,models,are,neat|[logistic,regression,models,are,neat]     |1     |
    +-----------------------------------+------------------------------------------+------+
    
    +-----------------------------------+------------------------------------------+------+
    |sentence                           |words                                     |tokens|
    +-----------------------------------+------------------------------------------+------+
    |Hi I heard about Spark             |[hi, i, heard, about, spark]              |5     |
    |I wish Java could use case classes |[i, wish, java, could, use, case, classes]|7     |
    |Logistic,regression,models,are,neat|[logistic, regression, models, are, neat] |5     |
    +-----------------------------------+------------------------------------------+------+

    2.count_vectorizer

    from __future__ import print_function
    from pyspark.sql import SparkSession
    from pyspark.ml.feature import CountVectorizer
    
    spark = SparkSession
        .builder
        .appName("CountVectorizerExample")
        .getOrCreate()
    
    df = spark.createDataFrame([
        (0, "a b c".split(" ")),
        (1, "a b b c a".split(" "))
    ], ["id", "words"])
    
    cv = CountVectorizer(inputCol="words", outputCol="features", vocabSize=3, minDF=2.0)
    
    model = cv.fit(df)
    
    result = model.transform(df)
    result.show(truncate=False)
    
    spark.stop()
    

      结果:

    +---+---------------+-------------------------+
    |id |words          |features                 |
    +---+---------------+-------------------------+
    |0  |[a, b, c]      |(3,[0,1,2],[1.0,1.0,1.0])|
    |1  |[a, b, b, c, a]|(3,[0,1,2],[2.0,2.0,1.0])|
    +---+---------------+-------------------------+

    3.TF-IDF权重

    from __future__ import print_function
    from pyspark.ml.feature import HashingTF, IDF, Tokenizer
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("TfIdfExample")
        .getOrCreate()
    
    sentenceData = spark.createDataFrame([
        (0.0, "Hi I heard about Spark"),
        (0.0, "I wish Java could use case classes"),
        (1.0, "Logistic regression models are neat")
    ], ["label", "sentence"])
    
    tokenizer = Tokenizer(inputCol="sentence", outputCol="words")#Tokenizer适合英文分词,spark中的中文分词效果最好的是NLPIR,jieba效果不是最好的 
    wordsData = tokenizer.transform(sentenceData)
    
    hashingTF = HashingTF(inputCol="words", outputCol="rawFeatures", numFeatures=20)
    featurizedData = hashingTF.transform(wordsData)
    
    idf = IDF(inputCol="rawFeatures", outputCol="features")
    idfModel = idf.fit(featurizedData)
    rescaledData = idfModel.transform(featurizedData)
    
    rescaledData.select("label", "features").show()
    
    spark.stop()
    

      结果:

    +-----+--------------------+
    |label|            features|
    +-----+--------------------+
    |  0.0|(20,[0,5,9,17],[0...|
    |  0.0|(20,[2,7,9,13,15]...|
    |  1.0|(20,[4,6,13,15,18...|
    +-----+--------------------+

    4.n-gram语言模型

    from __future__ import print_function
    from pyspark.ml.feature import NGram
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("NGramExample")
        .getOrCreate()
        
    #Hanmeimei loves LiLei
    #LiLei loves Hanmeimei
    
    wordDataFrame = spark.createDataFrame([
        (0, ["Hi", "I", "heard", "about", "Spark"]),
        (1, ["I", "wish", "Java", "could", "use", "case", "classes"]),
        (2, ["Logistic", "regression", "models", "are", "neat"])
    ], ["id", "words"])
    
    ngram = NGram(n=2, inputCol="words", outputCol="ngrams")
    
    ngramDataFrame = ngram.transform(wordDataFrame)
    ngramDataFrame.select("ngrams").show(truncate=False)
    
    spark.stop()
    

      结果:

    +------------------------------------------------------------------+
    |ngrams                                                            |
    +------------------------------------------------------------------+
    |[Hi I, I heard, heard about, about Spark]                         |
    |[I wish, wish Java, Java could, could use, use case, case classes]|
    |[Logistic regression, regression models, models are, are neat]    |
    +------------------------------------------------------------------+

    高级变换

    0.SQL变换

    from __future__ import print_function
    from pyspark.ml.feature import SQLTransformer
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("SQLTransformerExample")
        .getOrCreate()
    
    df = spark.createDataFrame([
        (0, 1.0, 3.0),
        (2, 2.0, 5.0)
    ], ["id", "v1", "v2"])
    
    sqlTrans = SQLTransformer(
        statement="SELECT *, (v1 + v2) AS v3, (v1 * v2) AS v4 FROM __THIS__")
    sqlTrans.transform(df).show()
    
    spark.stop()
    

      结果:

    +---+---+---+---+----+
    | id| v1| v2| v3|  v4|
    +---+---+---+---+----+
    |  0|1.0|3.0|4.0| 3.0|
    |  2|2.0|5.0|7.0|10.0|
    +---+---+---+---+----+

    1.R公式变换

    from __future__ import print_function
    from pyspark.ml.feature import RFormula
    from pyspark.sql import SparkSession
    
    spark = SparkSession
        .builder
        .appName("RFormulaExample")
        .getOrCreate()
    
    dataset = spark.createDataFrame(
        [(7, "US", 18, 1.0),
         (8, "CA", 12, 0.0),
         (9, "NZ", 15, 0.0)],
        ["id", "country", "hour", "clicked"])
    
    formula = RFormula(
        formula="clicked ~ country + hour",
        featuresCol="features",
        labelCol="label")
    
    output = formula.fit(dataset).transform(dataset)
    output.select("features", "label").show()
    
    spark.stop()
    

      结果:

    +--------------+-----+
    |      features|label|
    +--------------+-----+
    |[0.0,0.0,18.0]|  1.0|
    |[1.0,0.0,12.0]|  0.0|
    |[0.0,1.0,15.0]|  0.0|
    +--------------+-----+
    


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  • 原文地址:https://www.cnblogs.com/tianqizhi/p/11567783.html
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