• 决策树的应用


    最后更新: 2017-10-22

    一、Python机器学习的库:scikit-learn

    • 简单高效的数据挖掘和机器学习分析
    • 对所有用户开放,根据不同需求高度可重用性
    • 基于Numpy, SciPy和matplotlib
    • 开源,商用级别:获得 BSD许可

    安装 scikit-learn 自行 Google

    二、实战

    image_1bt23p7ffsvg17uc1lvq16uf3mb9.png-48.6kB

    参考: http://scikit-learn.org/stable/modules/tree.html

    源码:

    
    import csv
    from sklearn.feature_extraction import DictVectorizer
    from sklearn import preprocessing
    
    from sklearn import tree
    
    from sklearn.externals.six import StringIO
    
    # Read in the csv file and put features into list of dict and list of class label
    allElectronicsData = open('AllElectronics.csv', 'r')
    reader = csv.reader(allElectronicsData)
    
    
    featureList = []
    labelList = []
    
    with open('AllElectronics.csv', 'r') as csvfile:
        reader = csv.reader(csvfile)
    
        # 获得所有的头部属性
        headers = next(reader)
    
        for row in reader:
            # 将每一行的结果取出来
            labelList.append(row[len(row)-1])
    
            # 将对应的属性生成字典存起来, 第一列 是 RID, 不需要
            rowDict = {}
            for i in range(1, len(row)-1):
                rowDict[headers[i]] = row[i]
            featureList.append(rowDict)
    
    print(featureList)
    
    # Vetorize features
    vec = DictVectorizer()
    dummyX = vec.fit_transform(featureList).toarray()
    
    # 按照 get_feature_names 获取的属性去生成对应的 矩阵
    # ['age=middle_aged', 'age=senior', 'age=youth', 'credit_rating=excellent', 'credit_rating=fair', 'income=high', 'income=low', 'income=medium', 'student=no', 'student=yes']
    print(vec.get_feature_names())
    print(dummyX)
    
    print("labelList: " + str(labelList))
    
    # # vectorize class labels
    
    # 将结果集
    lb = preprocessing.LabelBinarizer()
    dummyY = lb.fit_transform(labelList)
    print("dummyY: " + str(dummyY))
    
    # Using decision tree for classification
    # clf = tree.DecisionTreeClassifier()
    
    # 按照什么属性来设置对对应的算法
    # 可以参考: http://scikit-learn.org/stable/modules/tree.html
    clf = tree.DecisionTreeClassifier(criterion='entropy')
    clf = clf.fit(dummyX, dummyY)
    print("clf: " + str(clf))
    
    
    # # Visualize model
    with open("allElectronicInformationGainOri.dot", 'w') as f:
        f = tree.export_graphviz(clf, feature_names=vec.get_feature_names(), out_file=f)
    
    
    # 修改一个值 来预测
    oneRowX = dummyX[0, :]
    print("oneRowX: " + str(oneRowX))
    
    newRowX = oneRowX
    newRowX[0] = 1
    newRowX[2] = 0
    print("newRowX: " + str(newRowX))
    
    predictedY = clf.predict([newRowX])
    print("predictedY: " + str(predictedY))
    
    
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  • 原文地址:https://www.cnblogs.com/gaox97329498/p/12070527.html
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