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python文本分类算法_python编写朴素贝叶斯用于文本分类

时间:2022-03-17 17:22:13

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python文本分类算法_python编写朴素贝叶斯用于文本分类

朴素贝叶斯估计

朴素贝叶斯是基于贝叶斯定理与特征条件独立分布假设的分类方法。首先根据特征条件独立的假设学习输入/输出的联合概率分布,然后基于此模型,对给定的输入x,利用贝叶斯定理求出后验概率最大的输出y。

具体的,根据训练数据集,学习先验概率的极大似然估计分布

以及条件概率为

Xl表示第l个特征,由于特征条件独立的假设,可得

条件概率的极大似然估计为

根据贝叶斯定理

则由上式可以得到条件概率P(Y=ck|X=x)。

贝叶斯估计

用极大似然估计可能会出现所估计的概率为0的情况。后影响到后验概率结果的计算,使分类产生偏差。采用如下方法解决。

条件概率的贝叶斯改为

其中Sl表示第l个特征可能取值的个数。

同样,先验概率的贝叶斯估计改为

$$

P(Y=c_k) = \frac{\sum\limits_{i=1}^NI(y_i=c_k)+\lambda}{N+K\lambda}

$K$

表示Y的所有可能取值的个数,即类型的个数。

具体意义是,给每种可能初始化出现次数为1,保证每种可能都出现过一次,来解决估计为0的情况。

文本分类

朴素贝叶斯分类器可以给出一个最有结果的猜测值,并给出估计概率。通常用于文本分类。

分类核心思想为选择概率最大的类别。贝叶斯公式如下:

词条:将每个词出现的次数作为特征。

假设每个特征相互独立,即每个词相互独立,不相关。则

完整代码如下;

import numpy as np

import re

import feedparser

import operator

def loadDataSet():

postingList=[['my', 'dog', 'has', 'flea', 'problems', 'help', 'please'],

['maybe', 'not', 'take', 'him', 'to', 'dog', 'park', 'stupid'],

['my', 'dalmation', 'is', 'so', 'cute', 'I', 'love', 'him'],

['stop', 'posting', 'stupid', 'worthless', 'garbage'],

['mr', 'licks', 'ate', 'my', 'steak', 'how', 'to', 'stop', 'him'],

['quit', 'buying', 'worthless', 'dog', 'food', 'stupid']]

classVec = [0,1,0,1,0,1] #1 is abusive, 0 not

return postingList,classVec

def createVocabList(data): #创建词向量

returnList = set([])

for subdata in data:

returnList = returnList | set(subdata)

return list(returnList)

def setofWords2Vec(vocabList,data): #将文本转化为词条

returnList = [0]*len(vocabList)

for vocab in data:

if vocab in vocabList:

returnList[vocabList.index(vocab)] += 1

return returnList

def trainNB0(trainMatrix,trainCategory): #训练,得到分类概率

pAbusive = sum(trainCategory)/len(trainCategory)

p1num = np.ones(len(trainMatrix[0]))

p0num = np.ones(len(trainMatrix[0]))

p1Denom = 2

p0Denom = 2

for i in range(len(trainCategory)):

if trainCategory[i] == 1:

p1num = p1num + trainMatrix[i]

p1Denom = p1Denom + sum(trainMatrix[i])

else:

p0num = p0num + trainMatrix[i]

p0Denom = p0Denom + sum(trainMatrix[i])

p1Vect = np.log(p1num/p1Denom)

p0Vect = np.log(p0num/p0Denom)

return p0Vect,p1Vect,pAbusive

def classifyNB(vec2Classify,p0Vec,p1Vec,pClass1): #分类

p0 = sum(vec2Classify*p0Vec)+np.log(1-pClass1)

p1 = sum(vec2Classify*p1Vec)+np.log(pClass1)

if p1 > p0:

return 1

else:

return 0

def textParse(bigString): #文本解析

splitdata = re.split(r'\W+',bigString)

splitdata = [token.lower() for token in splitdata if len(token) > 2]

return splitdata

def spamTest():

docList = []

classList = []

for i in range(1,26):

with open('spam/%d.txt'%i) as f:

doc = f.read()

docList.append(doc)

classList.append(1)

with open('ham/%d.txt'%i) as f:

doc = f.read()

docList.append(doc)

classList.append(0)

vocalList = createVocabList(docList)

trainList = list(range(50))

testList = []

for i in range(13):

num = int(np.random.uniform(0,len(docList))-10)

testList.append(trainList[num])

del(trainList[num])

docMatrix = []

docClass = []

for i in trainList:

subVec = setofWords2Vec(vocalList,docList[i])

docMatrix.append(subVec)

docClass.append(classList[i])

p0v,p1v,pAb = trainNB0(docMatrix,docClass)

errorCount = 0

for i in testList:

subVec = setofWords2Vec(vocalList,docList[i])

if classList[i] != classifyNB(subVec,p0v,p1v,pAb):

errorCount += 1

return errorCount/len(testList)

def calcMostFreq(vocabList,fullText):

count = {}

for vocab in vocabList:

count[vocab] = fullText.count(vocab)

sortedFreq = sorted(count.items(),key=operator.itemgetter(1),reverse=True)

return sortedFreq[:30]

def localWords(feed1,feed0):

docList = []

classList = []

fullText = []

numList = min(len(feed1['entries']),len(feed0['entries']))

for i in range(numList):

doc1 = feed1['entries'][i]['summary']

docList.append(doc1)

classList.append(1)

fullText.extend(doc1)

doc0 = feed0['entries'][i]['summary']

docList.append(doc0)

classList.append(0)

fullText.extend(doc0)

vocabList = createVocabList(docList)

top30Words = calcMostFreq(vocabList,fullText)

for word in top30Words:

if word[0] in vocabList:

vocabList.remove(word[0])

trainingSet = list(range(2*numList))

testSet = []

for i in range(20):

randnum = int(np.random.uniform(0,len(trainingSet)-5))

testSet.append(trainingSet[randnum])

del(trainingSet[randnum])

trainMat = []

trainClass = []

for i in trainingSet:

trainClass.append(classList[i])

trainMat.append(setofWords2Vec(vocabList,docList[i]))

p0V,p1V,pSpam = trainNB0(trainMat,trainClass)

errCount = 0

for i in testSet:

testData = setofWords2Vec(vocabList,docList[i])

if classList[i] != classifyNB(testData,p0V,p1V,pSpam):

errCount += 1

return errCount/len(testData)

if __name__=="__main__":

ny = feedparser.parse('/stp/index.rss')

sf = feedparser.parse('/stp/index.rss')

print(localWords(ny,sf))

编程技巧:

1.两个集合的并集

vocab = vocab | set(document)

2.创建元素全为零的向量

vec = [0]*10

代码及数据集下载:贝叶斯

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