Python实现决策树ID3算法

主要思想:

  0、训练集格式:特征1,特征2,...特征n,类别

  1、采用Python自带的数据结构字典递归的表示数据

  2、ID3计算的信息增益是指类别的信息增益,因此每次都是计算类别的熵

  3、ID3每次选择最优特征进行数据划分后都会消耗特征

  4、当特征消耗到一定程度,可能会出现数据实例一样,但是类别不一样的情况,这个时候选不出最优特征而返回-1;

     因此外面要捕获-1,要不然Python会以为最优特征是最后一列(类别)

#coding=utf-8
import operator
from math import log
import time
import os, sys
import string

def createDataSet(trainDataFile):
    print trainDataFile
    dataSet = []
    try:
        fin = open(trainDataFile)
        for line in fin:
            line = line.strip()
            cols = line.split('	')
            row = [cols[1], cols[2], cols[3], cols[4], cols[5], cols[6], cols[7], cols[8], cols[9], cols[10], cols[0]]
            dataSet.append(row)
            #print row
    except:
        print 'Usage xxx.py trainDataFilePath outputTreeFilePath'
        sys.exit()
        labels = ['cip1', 'cip2', 'cip3', 'cip4', 'sip1', 'sip2', 'sip3', 'sip4', 'sport', 'domain']
    print 'dataSetlen', len(dataSet)
        return dataSet, labels

#calc shannon entropy
def calcShannonEnt(dataSet):
    numEntries = len(dataSet)
    labelCounts = {}
    for feaVec in dataSet:
        currentLabel = feaVec[-1]  #每次都是计算类别的熵
        if currentLabel not in labelCounts:
            labelCounts[currentLabel] = 0
        labelCounts[currentLabel] += 1
    shannonEnt = 0.0
    for key in labelCounts:
        prob = float(labelCounts[key])/numEntries
        shannonEnt -= prob * log(prob, 2)
    return shannonEnt

def splitDataSet(dataSet, axis, value):
    retDataSet = []
    for featVec in dataSet:
        if featVec[axis] == value:
            reducedFeatVec = featVec[:axis]
            reducedFeatVec.extend(featVec[axis+1:])
            retDataSet.append(reducedFeatVec)
    return retDataSet
    
def chooseBestFeatureToSplit(dataSet):
    numFeatures = len(dataSet[0]) - 1    #last col is label
    baseEntropy = calcShannonEnt(dataSet)
    bestInfoGain = 0.0
    bestFeature = -1
    for i in range(numFeatures):
        featList = [example[i] for example in dataSet]
        uniqueVals = set(featList)
        newEntropy = 0.0
        for value in uniqueVals:
            subDataSet = splitDataSet(dataSet, i, value)
            prob = len(subDataSet) / float(len(dataSet))
            newEntropy += prob * calcShannonEnt(subDataSet)
        infoGain = baseEntropy -newEntropy
        if infoGain > bestInfoGain:
            bestInfoGain = infoGain
            bestFeature = i
    return bestFeature
            
#feature is exhaustive, reture what you want label
def majorityCnt(classList):
    classCount = {}
    for vote in classList:
        if vote not in classCount.keys():
            classCount[vote] = 0
        classCount[vote] += 1
    return max(classCount)         
    
def createTree(dataSet, labels):
    classList = [example[-1] for example in dataSet]
    if classList.count(classList[0]) ==len(classList):    #all data is the same label
        return classList[0]
    if len(dataSet[0]) == 1:    #all feature is exhaustive
        return majorityCnt(classList)
    bestFeat = chooseBestFeatureToSplit(dataSet)
    bestFeatLabel = labels[bestFeat]
    if(bestFeat == -1):        #特征一样,但类别不一样,即类别与特征不相关,随机选第一个类别做分类结果
        return classList[0] 
    myTree = {bestFeatLabel:{}}
    del(labels[bestFeat])
    featValues = [example[bestFeat] for example in dataSet]
    uniqueVals = set(featValues)
    for value in uniqueVals:
        subLabels = labels[:]
        myTree[bestFeatLabel][value] = createTree(splitDataSet(dataSet, bestFeat, value),subLabels)
    return myTree
    
def main():
    data,label = createDataSet(sys.argv[1])
    t1 = time.clock()
    myTree = createTree(data,label)
    t2 = time.clock()
    fout = open(sys.argv[2], 'w')
    fout.write(str(myTree))
    fout.close()
    print 'execute for ',t2-t1
if __name__=='__main__':
    main()
原文地址:https://www.cnblogs.com/vincent-vg/p/6740635.html