科学经得起实践检验

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科学经得起实践检验

科学经得起实践检验

科学经得起实践检验-python3.6通过决策树实战精准准确预测今日大盘走势(含代码)




春有百花秋有月,夏有凉风冬有雪;

若无闲事挂心头,便是人间好时节。

  

  --宋.无门慧开


不废话了,以下训练模型数据,采用本人发明的极致800实时指数近期的一些实际数据,

预测采用今日的真实数据

#coding=utf-8
__author__ = 'huangzhi'

import math
import operatordef calcShannonEnt(dataset):numEntries = len(dataset)labelCounts = {}for featVec in dataset:currentLabel = featVec[-1]if currentLabel not in labelCounts.keys():labelCounts[currentLabel] = 0
        labelCounts[currentLabel] += 1

    shannonEnt = 0.0
    for key in labelCounts:prob = float(labelCounts[key]) / numEntriesshannonEnt -= prob * math.log(prob, 2)return shannonEntdef CreateDataSet():# dataset = [[1, 1, 'yes'],
    #            [1, 1, 'yes'],
    #            [1, 0, 'no'],
    #            [0, 1, 'no'],
    #            [0, 1, 'no']]

    dataset = [[3, 4, 100, 85, 4, 6, 110, 120, 4, 6, 151, 122, 8, 12, 110, 185, ''],[5, 7, 88, 85, 6, 8, 100, 130, 6, 9, 131, 132, 8, 14, 100, 195, ''],[6, 2, 60, 20, 9, 3, 80, 22, 16, 4, 131, 32, 33, 5, 160, 45, ''],[3, 4, 100, 105, 4, 6, 110, 120, 4, 6, 151, 122, 8, 12, 110, 185, ''],[5, 3, 50, 30, 8, 4, 70, 28, 12, 6, 101, 42, 28, 7, 120, 35, ''],[2, 6, 60, 95, 4, 8, 90, 130, 6, 11, 101, 142, 9, 15, 99, 145, ''],[5, 3, 70, 30, 8, 4, 90, 32, 22, 6, 141, 42, 43, 8, 150, 65, ''],[2, 8, 30, 60, 9, 8, 80, 90, 9, 20, 140, 160, 12, 32, 101, 205, '']]labels = ['l1', 'l2', 'l3', 'l4', 'l5', 'l6', 'l7', 'l8', 'l9', 'l11', 'l12', 'l13', 'l14', 'l15', 'l16', 'l17']return dataset, labelsdef splitDataSet(dataSet, axis, value):retDataSet = []for featVec in dataSet:if featVec[axis] == value:reducedFeatVec = featVec[:d(featVec[axis + 1:])retDataSet.append(reducedFeatVec)return retDataSetdef chooseBestFeatureToSplit(dataSet):numberFeatures = len(dataSet[0]) - 1
    baseEntropy = calcShannonEnt(dataSet)bestInfoGain = 0.0;bestFeature = -1;for i in range(numberFeatures):featList = [example[i] for example in dataSet]# print(featList)
        uniqueVals = set(featList)# print(uniqueVals)
        newEntropy = 0.0
        for 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 bestFeaturedef majorityCnt(classList):classCount = {}for vote in classList:if vote not in classCount.keys():classCount[vote] = 0
        classCount[vote] = 1
    sortedClassCount = sorted(classCount.iteritems(), key=operator.itemgetter(1), reverse=True)return sortedClassCount[0][0]def createTree(dataSet, inputlabels):labels = inputlabels[:]classList = [example[-1] for example in dataSet]if return classList[0]if len(dataSet[0]) == 1:return majorityCnt(classList)bestFeat = chooseBestFeatureToSplit(dataSet)bestFeatLabel = labels[bestFeat]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 myTreedef classify(inputTree, featLabels, testVec):firstStr = list(inputTree.keys())[0]secondDict = inputTree[firstStr]featIndex = featLabels.index(firstStr)for key in secondDict.keys():if testVec[featIndex] == key:if type(secondDict[key]).__name__ == 'dict':classLabel = classify(secondDict[key], featLabels, testVec)else:classLabel = secondDict[key]return classLabelmyDat, labels = CreateDataSet()
# print(calcShannonEnt(myDat))

# print(splitDataSet(myDat, 1, 1))

# print(chooseBestFeatureToSplit(myDat))

myTree = createTree(myDat, labels)#通过早上9:41分的实际数据进行预测
print(classify(myTree, labels, [1, 6, 156, 169, 1, 6, 156, 169, 1, 6, 156, 169, 1, 6, 156, 169]))
#通过早上10:41分的实际数据进行预测
print(classify(myTree, labels, [1, 6, 156, 169, 4, 9, 129, 263, 4, 9, 129, 263, 4, 9, 129, 263]))
#通过下午13:41分的实际数据进行预测
print(classify(myTree, labels, [1, 6, 156, 169, 4, 9, 129, 263, 5, 12, 123, 306, 5, 12, 123, 306]))
#通过下午14:41分的实际数据进行预测
print(classify(myTree, labels, [1, 6, 156, 169, 4, 9, 129, 263, 5, 12, 123, 306, 6, 13, 99, 397]))
 
 
运行结果如下:
D:ProgramsPython D:/pyfenlei/决策树/jcs4.py
跌
跌
跌
跌

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