• 基于sklearn 实现决策树(含最简代码,复杂源码:预测带不带眼镜)


    最简代码:

    1 #简单的决策树分类
    2 from sklearn import tree
    3 features = [[300,2],[450,2],[200,8],[150,9]]
    4 labels = ['apple','apple','orange','orange']
    5 clf = tree.DecisionTreeClassifier()
    6 clf = clf.fit(features,labels)
    7 print(clf.predict([[400,6]]))

    预测代码:

    数据集下载地址

    代码:

     1 # -*- coding: UTF-8 -*-
     2 from sklearn.preprocessing import LabelEncoder, OneHotEncoder
     3 from sklearn.externals.six import StringIO
     4 from sklearn import tree
     5 import pandas as pd
     6 import numpy as np
     7 import pydotplus
     8 
     9 if __name__ == '__main__':
    10     with open('datalenses.txt', 'r') as fr:                                        #加载文件
    11         lenses = [inst.strip().split('	') for inst in fr.readlines()]        #处理文件
    12     lenses_target = []                                                        #提取每组数据的类别,保存在列表里
    13     for each in lenses:
    14         lenses_target.append(each[-1])
    15 
    16     lensesLabels = ['age', 'prescript', 'astigmatic', 'tearRate']            #特征标签
    17     lenses_list = []                                                        #保存lenses数据的临时列表
    18     lenses_dict = {}                                                        #保存lenses数据的字典,用于生成pandas
    19     for each_label in lensesLabels:                                            #提取信息,生成字典
    20         for each in lenses:
    21             lenses_list.append(each[lensesLabels.index(each_label)])
    22         lenses_dict[each_label] = lenses_list
    23         lenses_list = []
    24     # print(lenses_dict)                                                        #打印字典信息
    25     lenses_pd = pd.DataFrame(lenses_dict)                                    #生成pandas.DataFrame
    26     print(lenses_pd)                                                        #打印pandas.DataFrame
    27     le = LabelEncoder()                                                        #创建LabelEncoder()对象,用于序列化
    28     for col in lenses_pd.columns:                                            #序列化
    29         lenses_pd[col] = le.fit_transform(lenses_pd[col])
    30     print(lenses_pd)                                                        #打印编码信息
    31 
    32     clf = tree.DecisionTreeClassifier(max_depth = 4)                        #创建DecisionTreeClassifier()类
    33     clf = clf.fit(lenses_pd.values.tolist(), lenses_target)                    #使用数据,构建决策树
    34     print(lenses_target)
    35     print(clf.predict([[1,1,1,0]]))                    #预测
    预测眼镜
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  • 原文地址:https://www.cnblogs.com/smartisn/p/12403907.html
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