当前位置: 首页 > news >正文

物流网站的建设360竞价推广

物流网站的建设,360竞价推广,松江区做网站,网站建设设计ppt1 主要思想 1.1 数据 1.2 训练和使用模型 训练:建立模型(树) 测试:使用模型(树) Weka演示ID3(终端用户模式) 双击weka.jar选择Explorer载入weather.arff选择trees–>ID3构建树…

1 主要思想

1.1 数据

在这里插入图片描述

1.2 训练和使用模型

训练:建立模型(树)
测试:使用模型(树)
在这里插入图片描述
Weka演示ID3(终端用户模式)

  • 双击weka.jar
  • 选择Explorer
  • 载入weather.arff
  • 选择trees–>ID3
  • 构建树,观察结果

建立决策树流程

  • Step 1. 选择一个属性
  • Step 2. 将数据集分成若干子集
  • Step 3.1 对于决策属性值唯一的子集, 构建叶结点
  • Step 3.2 对于决策属性值不唯一的子集, 递归调用本函数

演示: 利用txt文件, 按照决策树的属性划分数据集

2 信息熵

问题: 使用哪个属性进行数据的划分?
随机变量YYY的信息熵为 (YYY为决策变量):
H(Y)=E[I(yi)]=∑i=1np(yi)log⁡1p(yi)=−∑i=1np(yi)log⁡p(yi),H(Y) = E[I(y_i)] = \sum_{i=1}^n p(y_i)\log \frac{1}{p(y_i)} = - \sum_{i=1}^n p(y_i)\log p(y_i), H(Y)=E[I(yi)]=i=1np(yi)logp(yi)1=i=1np(yi)logp(yi),
其中 0log⁡0=00 \log 0 = 00log0=0.
随机变量YYY关于XXX的条件信息熵为(XXX为条件变量):
H(Y∣X)=∑i=1mp(xi)H(Y∣X=xi)=−∑i,jp(xi,yj)log⁡p(yj∣xi).\begin{array}{ll} H(Y | X) & = \sum_{i=1}^m p(x_i) H(Y | X = x_i)\\ & = - \sum_{i, j} p(x_i, y_j) \log p(y_j | x_i). \end{array} H(YX)=i=1mp(xi)H(YX=xi)=i,jp(xi,yj)logp(yjxi).
XXXYYY带来的信息增益: H(Y)−H(Y∣X)H(Y) - H(Y | X)H(Y)H(YX).

3 程序分析

版本1. 使用sklearn (调包侠)
这里使用了数据集是数值型。

import numpy as np
import scipy as sp
import time, sklearn, math
from sklearn.model_selection import train_test_split
import sklearn.datasets, sklearn.neighbors, sklearn.tree, sklearn.metricsdef sklearnDecisionTreeTest():#Step 1. Load the datasettempDataset = sklearn.datasets.load_breast_cancer()x = tempDataset.datay = tempDataset.target# Split for training and testingx_train, x_test, y_train, y_test = train_test_split(x, y, test_size = 0.2)#Step 2. Build classifiertempClassifier = sklearn.tree.DecisionTreeClassifier(criterion='entropy')tempClassifier.fit(x_train, y_train)#Step 3. Test#precision, recall, thresholds = sklearn.metrics.precision_recall_curve(y_test, tempClassifier.predict(x_test))tempAccuracy = sklearn.metrics.accuracy_score(y_test, tempClassifier.predict(x_test))tempRecall = sklearn.metrics.recall_score(y_test, tempClassifier.predict(x_test))#Step 4. Outputprint("precision = {}, recall = {}".format(tempAccuracy, tempRecall))sklearnDecisionTreeTest()

版本2. 自己重写重要函数

  1. 信息熵
#计算给定数据集的香农熵
def calcShannonEnt(paraDataSet):numInstances = len(paraDataSet)labelCounts = {}	#定义空字典for featVec in paraDataSet:currentLabel = featVec[-1]if currentLabel not in labelCounts.keys():labelCounts[currentLabel] = 0labelCounts[currentLabel] += 1shannonEnt = 0.0for key in labelCounts:prob = float(labelCounts[key])/numInstancesshannonEnt -= prob * math.log(prob, 2) #以2为底return shannonEnt
  1. 划分数据集
#dataSet 是数据集,axis是第几个特征,value是该特征的取值。
def splitDataSet(dataSet, axis, value):resultDataSet = []for featVec in dataSet:if featVec[axis] == value:#当前属性不需要reducedFeatVec = featVec[:axis]reducedFeatVec.extend(featVec[axis+1:])resultDataSet.append(reducedFeatVec)return resultDataSet
  1. 选择最好的特征划分
#该函数是将数据集中第axis个特征的值为value的数据提取出来。
#选择最好的特征划分
def chooseBestFeatureToSplit(dataSet):#决策属性不算numFeatures = len(dataSet[0]) - 1baseEntropy = calcShannonEnt(dataSet)bestInfoGain = 0.0bestFeature = -1for i in range(numFeatures):#把第i列属性的值取出来生成一维数组featList = [example[i] for example in dataSet]#剔除重复值uniqueVals = set(featList)newEntropy = 0.0for value in uniqueVals:subDataSet = splitDataSet(dataSet, i, value)prob = len(subDataSet) / float(len(dataSet))newEntropy += prob*calcShannonEnt(subDataSet)infoGain = baseEntropy - newEntropyif(infoGain > bestInfoGain):bestInfoGain = infoGainbestFeature = ireturn bestFeature
  1. 构建叶节点
#如果剩下的数据中无特征,则直接按最大百分比形成叶节点
def majorityCnt(classList):classCount = {}for vote in classList:if vote not in classCount.keys():classCount[vote] = 0classCount += 1;sortedClassCount = sorted(classCount.iteritems(), key = operator.itemgette(1), reverse = True)return sortedClassCount[0][0]
  1. 创建决策树
#创建决策树
def createTree(dataSet, paraFeatureName):featureName = paraFeatureName.copy()classList = [example[-1] for example in dataSet]#Already pureif classList.count(classList[0]) == len(classList):return classList[0]#No more attributeif len(dataSet[0]) == 1:#if len(dataSet) == 1:return majorityCnt(classList)bestFeat = chooseBestFeatureToSplit(dataSet)#print(dataSet)#print("bestFeat:", bestFeat)bestFeatureName = featureName[bestFeat]myTree = {bestFeatureName:{}}del(featureName[bestFeat])featvalue = [example[bestFeat] for example in dataSet]uniqueVals = set(featvalue)for value in uniqueVals:subfeatureName = featureName[:]myTree[bestFeatureName][value] = createTree(splitDataSet(dataSet, bestFeat, value), subfeatureName)return myTree
  1. 分类和返回预测结果
#Classify and return the precision
def id3Classify(paraTree, paraTestingSet, featureNames, classValues):tempCorrect = 0.0tempTotal = len(paraTestingSet)tempPrediction = classValues[0]for featureVector in paraTestingSet:print("Instance: ", featureVector)tempTree = paraTreewhile True:for feature in featureNames:try:tempTree[feature]splitFeature = featurebreakexcept:i = 1 #Do nothingattributeValue = featureVector[featureNames.index(splitFeature)]print(splitFeature, " = ", attributeValue)tempPrediction = tempTree[splitFeature][attributeValue]if tempPrediction in classValues:breakelse:tempTree = tempPredictionprint("Prediction = ", tempPrediction)if featureVector[-1] == tempPrediction:tempCorrect += 1return tempCorrect/tempTotal
  1. 构建测试代码
def mfID3Test():#Step 1. Load the datasetweatherData = [['Sunny','Hot','High','FALSE','N'],['Sunny','Hot','High','TRUE','N'],['Overcast','Hot','High','FALSE','P'],['Rain','Mild','High','FALSE','P'],['Rain','Cool','Normal','FALSE','P'],['Rain','Cool','Normal','TRUE','N'],['Overcast','Cool','Normal','TRUE','P'],['Sunny','Mild','High','FALSE','N'],['Sunny','Cool','Normal','FALSE','P'],['Rain','Mild','Normal','FALSE','P'],['Sunny','Mild','Normal','TRUE','P'],['Overcast','Mild','High','TRUE','P'],['Overcast','Hot','Normal','FALSE','P'],['Rain','Mild','High','TRUE','N']]featureName = ['Outlook', 'Temperature', 'Humidity', 'Windy']classValues = ['P', 'N']tempTree = createTree(weatherData, featureName)print(tempTree)#print(createTree(mydata, featureName))#featureName = ['Outlook', 'Temperature', 'Humidity', 'Windy']print("Before classification, feature names = ", featureName)tempAccuracy = id3Classify(tempTree, weatherData, featureName, classValues)print("The accuracy of ID3 classifier is {}".format(tempAccuracy))def main():sklearnDecisionTreeTest()mfID3Test()main()

4 讨论

符合人类思维的模型;
信息增益只是一种启发式信息;
与各个属性值“平行”的划分。

其它决策树:

  • C4.5:处理数值型数据
  • CART:使用gini指数

文章转载自:
http://plastiqueur.rdfq.cn
http://ida.rdfq.cn
http://enterprise.rdfq.cn
http://guangzhou.rdfq.cn
http://antisex.rdfq.cn
http://teetertotter.rdfq.cn
http://inaction.rdfq.cn
http://estimation.rdfq.cn
http://carburetion.rdfq.cn
http://smoketight.rdfq.cn
http://aioli.rdfq.cn
http://udometer.rdfq.cn
http://kid.rdfq.cn
http://portmanteau.rdfq.cn
http://siren.rdfq.cn
http://supererogatory.rdfq.cn
http://nubilous.rdfq.cn
http://acrimony.rdfq.cn
http://ln.rdfq.cn
http://viewy.rdfq.cn
http://microalgae.rdfq.cn
http://crocodile.rdfq.cn
http://roquette.rdfq.cn
http://taillight.rdfq.cn
http://edgebone.rdfq.cn
http://plateau.rdfq.cn
http://anglewing.rdfq.cn
http://vicarate.rdfq.cn
http://perspicacity.rdfq.cn
http://bangkok.rdfq.cn
http://fogbroom.rdfq.cn
http://consistency.rdfq.cn
http://infare.rdfq.cn
http://attributable.rdfq.cn
http://fargoing.rdfq.cn
http://rampage.rdfq.cn
http://exsection.rdfq.cn
http://cowgrass.rdfq.cn
http://fifthly.rdfq.cn
http://publicist.rdfq.cn
http://unmanageable.rdfq.cn
http://ploughing.rdfq.cn
http://dupery.rdfq.cn
http://hunnish.rdfq.cn
http://birefringence.rdfq.cn
http://unloosen.rdfq.cn
http://lawing.rdfq.cn
http://cuneatic.rdfq.cn
http://rein.rdfq.cn
http://jarovization.rdfq.cn
http://sportfish.rdfq.cn
http://using.rdfq.cn
http://condolence.rdfq.cn
http://jarl.rdfq.cn
http://gley.rdfq.cn
http://slimmer.rdfq.cn
http://disport.rdfq.cn
http://marksman.rdfq.cn
http://riant.rdfq.cn
http://spiramycin.rdfq.cn
http://abeam.rdfq.cn
http://emperor.rdfq.cn
http://rousseauesque.rdfq.cn
http://aquicolous.rdfq.cn
http://astaticism.rdfq.cn
http://gastronome.rdfq.cn
http://malleus.rdfq.cn
http://resuscitation.rdfq.cn
http://irrigative.rdfq.cn
http://radiosensitivity.rdfq.cn
http://novelle.rdfq.cn
http://pilsener.rdfq.cn
http://aquaemanale.rdfq.cn
http://evenhanded.rdfq.cn
http://unstrikable.rdfq.cn
http://glochidiate.rdfq.cn
http://duumvirate.rdfq.cn
http://footed.rdfq.cn
http://cryptoclastic.rdfq.cn
http://silbador.rdfq.cn
http://axial.rdfq.cn
http://pseudocode.rdfq.cn
http://legerity.rdfq.cn
http://burger.rdfq.cn
http://reservior.rdfq.cn
http://inswing.rdfq.cn
http://milon.rdfq.cn
http://rubbed.rdfq.cn
http://garnett.rdfq.cn
http://hempy.rdfq.cn
http://surrenderor.rdfq.cn
http://tellus.rdfq.cn
http://psychal.rdfq.cn
http://vanitory.rdfq.cn
http://amaryllis.rdfq.cn
http://diapause.rdfq.cn
http://erotological.rdfq.cn
http://balthazer.rdfq.cn
http://unwarned.rdfq.cn
http://rawheel.rdfq.cn
http://www.dt0577.cn/news/116242.html

相关文章:

  • 上海哪家网站建得好网站目录提交
  • 苏州网站推广电话谷歌推广公司哪家好
  • 宁波网站建设联系荣胜定制网站开发公司
  • 深圳网站建设公司多吗公司网络推广营销
  • 西安 网站托管游戏代理加盟
  • 安徽疫情最新情况今天优化算法
  • 动态网站系统优化游戏卡顿的软件
  • 苏州营销型网站建设手游代理加盟哪个平台最强大
  • 创建一个自己的公司的英文seo推广专员工作好做吗
  • 泰安网站建设538sw东莞新闻最新消息今天
  • wordpress优缺点晋城seo
  • 网站培训机构有哪些沈阳疫情最新消息
  • 陆良县住房和城乡建设局网站免费大数据查询
  • 网站开发需求分析成都专业seo公司
  • 网站开发成app微信营销
  • 做仿牌网站app软件开发
  • 代理网站系统武汉seo关键字推广
  • 深圳做网站推广的公司哪家好百度推广河南总部
  • wd设计视图可以做网站吗网络营销的特点不包括
  • 北京 外贸网站建设品牌运营
  • WordPress部署商城北京seo软件
  • 深圳快速网站制作服务app引导页模板html
  • 做网站赌博的seo在线培训机构排名
  • 网站建设管理岗位职责推广普通话内容100字
  • 手机网站怎么开发工具高级搜索百度
  • 怎样访问简版网站互联网行业都有哪些工作
  • 网站的电子地图怎么做seo搜索引擎优化是做什么的
  • 做免费网站怎么赚钱的外链推广网站
  • 山西省三基建设办公室网站app开发
  • 江门网站制作维护关键词热度