[机器学习案例1]基于KNN手写数字识别

算法介绍

之前已经介绍过,简单来说,K-NN可以看成:有那么一堆你已经知道分类的数据,然后当一个新数据进入的时候,就开始跟训练数据里的每个点求距离,然后挑离这个训练数据最近的K个点看看这几个点属于什么类型,然后用少数服从多数的原则,给新数据归类。

算法步骤:

算法步骤:
1. step.1—初始化距离为最大值
2. step.2—计算未知样本和每个训练样本的距离dist
3. step.3—得到目前K个最临近样本中的最大距离maxdist
4. step.4—如果dist小于maxdist,则将该训练样本作为K-最近邻样本
5. step.5—重复步骤2、3、4,直到未知样本和所有训练样本的距离都算完
6. step.6—统计K-最近邻样本中每个类标号出现的次数
7. step.7—选择出现频率最大的类标号作为未知样本的类标号

案例分析

首先一个CNN算法

from numpy import *  
import operator  

def createDataSet():  
    group = array([[1.0,1.1],[1.0,1.0],[0,0],[0,0.1]])  
    labels = ['A','A','B','B']  
    return group,labels  

def classify0(inX,dataSet,labels,k):  
    dataSetSize = dataSet.shape[0]  
    diffMat = tile(inX,(dataSetSize,1)) - dataSet  
    sqDiffMat = diffMat**2  
    sqDistances = sqDiffMat.sum(axis = 1)  
    distances = sqDistances**0.5  
    sortedDistIndicies = distances.argsort()  
    classCount = {}  
    for i in range(k):  
        voteIlabel = labels[sortedDistIndicies[i]]  
        classCount[voteIlabel] = classCount.get(voteIlabel,0) + 1  
    sortedClassCount = sorted(classCount.iteritems(),  
                              key=operator.itemgetter(1),reverse=True)  
    return sortedClassCount[0][0] 

测试算法:

#! /usr/bin/env python
# -*- coding: utf-8 -*-
from numpy import *
from os import listdir
import KNN
from numpy.core import multiarray



def img2vector(filename):
    '图像文件转换成矩阵'
    returnVect = zeros((1,1024))
    fr = open(filename)
    for i in range(32):             #将32行合并成一行
        lineStr = fr.readline()
        for j in range(32):
            returnVect[0,32*i+j] = int(lineStr[j])
    return returnVect               #一个样本最终成为一个1*1024的向量


def handwritingClassTest():
    '手写识别测试函数,调用了KNN模块的KNN分类器函数'
    hwLabels = []
    trainingFileList = listdir('trainingDigits')
    m = len(trainingFileList)
    trainingMat = zeros((m,1024))
    for i in range(m):
        fileNameStr = trainingFileList[i]
        fileStr = fileNameStr.split('.')[0]
        classNumStr = int(fileStr.split('_')[0])
        hwLabels.append(classNumStr)
        trainingMat[i,:] = img2vector('trainingDigits/%s' % fileNameStr)

    testFileList = listdir('testDigits')
    errorCount = 0.0
    mTest = len(testFileList)
    for i in range(mTest):
        fileNameStr = testFileList[i]
        fileStr = fileNameStr.split('.')[0]
        classNumStr = int(fileStr.split('_')[0])
        vectorUnderTest = img2vector('testDigits/%s' % fileNameStr)
        classifierResult = KNN.classify0(vectorUnderTest, trainingMat, hwLabels, 3)
        print "in #%d, the classifier came back with: %d, the real answer is: %d" % (i, classifierResult, classNumStr)
        if (classifierResult != classNumStr):
            errorCount += 1.0
    print "\nthe total number of errors is: %d" % errorCount
    print "\nthe total error rate is: %f" % (errorCount/float(mTest))

handwritingClassTest()

源码下载地址:

源码下载地址

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转载自blog.csdn.net/baihuaxiu123/article/details/72662828