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决策树算法

决策树算法

作者: 小白不是酱 | 来源:发表于2018-10-14 17:43 被阅读0次
    1. Python机器学习库:scikit-learn
      1.1 特性: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形,基于Numpy,SciPy和matplotlib,开源,商用级别:获得BSD许可
      2.1 覆盖问题领域:分类(classification),回归(regression),聚类(clustering),降维(dimensioniality reduction),模型分类(model selection),预处理(preprocessing)

    2. 案例

    from sklearn.feature_extraction import DictVectorizer
    import csv
    from sklearn import preprocessing
    from sklearn import tree
    from sklearn.externals.six import StringIO
    
    # Read in the csv file and put features in alist of dict and list of class label
    allElectronicsData = open(r'AllElectronics.csv', 'rt') # 由于python版本问题,读取方式改为rt
    reader = csv.reader(allElectronicsData)
    headers = next(reader)
    
    # print(headers)
    
    featuresList = [] # 特征值列表
    labelList = [] # 类别值 Class buys computer
    
    for row in reader: # 每一个row就是每一行
       labelList.append(row[len(row) - 1]) # 取每一行最后一个值 Class buys computer
       rowDict = {} # 我们要取每一行的特征值,除了第一行
       for i in range(1, len(row) - 1):
           # print(row[i])
           rowDict[headers[i]] = row[i]
           # print(rowDict)
       featuresList.append(rowDict)
    
    # print(featuresList)
    
    # Yetorize features
    vec = DictVectorizer()
    dummyX = vec.fit_transform(featuresList).toarray() # 转换成01格式
    
    print(dummyX)
    print(vec.get_feature_names())
    print('labelList:', labelList)
    
    # Yectorize class labels
    lb = preprocessing.LabelBinarizer() # 将yes/no转换为01
    dummyY = lb.fit_transform(labelList)
    print('dummyY:', dummyY)
    
    # Using decision tree for classification
    # clf = tree.DecisionTreeClassfier() 分类器
    clf = tree.DecisionTreeClassifier(criterion='entropy') # 信息熵之间的差异
    clf = clf.fit(dummyX, dummyY)
    print('clf:', clf)
    
    # yisulize model
    # with open(r'allElectronicGiniOri.dot', 'w') as f:
    with open(r'allElectronicInformationGainOri.dot', 'w') as f:
       # f = tree.export_graphviz(clf, out_file = f)
       f = tree.export_graphviz(clf, feature_names=vec.get_feature_names(), out_file=f)
    
    
    # 假设有新数据
    oneRowX = dummyX[0, :]
    print('oneRowX:', oneRowX)
    
    newRowX = oneRowX
    
    newRowX[0] = 1
    newRowX[2] = 0
    print('newRowX:', newRowX)
    
    

    运行结果我们得到

    dot

    但是这样看起来不够直观,我们可以使用Graphviz转换dot文件至pdf可视化决策树,效果如下:

    决策树可视化

    安装 Graphviz: http://www.graphviz.org/
    安装后可以自行百度或google查找配置环境变量
    转化dot文件至pdf可视化决策树:dot -Tpdf iris.dot -o outpu.pdf

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