帮一个贴吧的朋友改的一段代码,源代码来自《机器学习实战》

原代码的功能是识别0和9两个数字

经过改动之后可以识别0~9,并且将分类器的产生和测试部分分开来写,免得每次测试数据都要重新生成分类器一次。

from numpy import *
from time import sleep def loadDataSet(fileName):
dataMat = []; labelMat = []
fr = open(fileName)
for line in fr.readlines():
lineArr = line.strip().split('\t')
dataMat.append([float(lineArr[0]), float(lineArr[1])])
labelMat.append(float(lineArr[2]))
return dataMat,labelMat def selectJrand(i,m):
j=i #we want to select any J not equal to i
while (j==i):
j = int(random.uniform(0,m))
return j def clipAlpha(aj,H,L):
if aj > H:
aj = H
if L > aj:
aj = L
return aj def smoSimple(dataMatIn, classLabels, C, toler, maxIter):
dataMatrix = mat(dataMatIn); labelMat = mat(classLabels).transpose()
b = 0; m,n = shape(dataMatrix)
alphas = mat(zeros((m,1)))
iter = 0
while (iter < maxIter):
alphaPairsChanged = 0
for i in range(m):
fXi = float(multiply(alphas,labelMat).T*(dataMatrix*dataMatrix[i,:].T)) + b
Ei = fXi - float(labelMat[i])#if checks if an example violates KKT conditions
if ((labelMat[i]*Ei < -toler) and (alphas[i] < C)) or ((labelMat[i]*Ei > toler) and (alphas[i] > 0)):
j = selectJrand(i,m)
fXj = float(multiply(alphas,labelMat).T*(dataMatrix*dataMatrix[j,:].T)) + b
Ej = fXj - float(labelMat[j])
alphaIold = alphas[i].copy(); alphaJold = alphas[j].copy();
if (labelMat[i] != labelMat[j]):
L = max(0, alphas[j] - alphas[i])
H = min(C, C + alphas[j] - alphas[i])
else:
L = max(0, alphas[j] + alphas[i] - C)
H = min(C, alphas[j] + alphas[i])
if L==H:
#print "L==H";
continue
eta = 2.0 * dataMatrix[i,:]*dataMatrix[j,:].T - dataMatrix[i,:]*dataMatrix[i,:].T - dataMatrix[j,:]*dataMatrix[j,:].T
if eta >= 0:
#print "eta>=0";
continue
alphas[j] -= labelMat[j]*(Ei - Ej)/eta
alphas[j] = clipAlpha(alphas[j],H,L)
if (abs(alphas[j] - alphaJold) < 0.00001): print "j not moving enough"; continue
alphas[i] += labelMat[j]*labelMat[i]*(alphaJold - alphas[j])#update i by the same amount as j
#the update is in the oppostie direction
b1 = b - Ei- labelMat[i]*(alphas[i]-alphaIold)*dataMatrix[i,:]*dataMatrix[i,:].T - labelMat[j]*(alphas[j]-alphaJold)*dataMatrix[i,:]*dataMatrix[j,:].T
b2 = b - Ej- labelMat[i]*(alphas[i]-alphaIold)*dataMatrix[i,:]*dataMatrix[j,:].T - labelMat[j]*(alphas[j]-alphaJold)*dataMatrix[j,:]*dataMatrix[j,:].T
if (0 < alphas[i]) and (C > alphas[i]): b = b1
elif (0 < alphas[j]) and (C > alphas[j]): b = b2
else: b = (b1 + b2)/2.0
alphaPairsChanged += 1
#print "iter: %d i:%d, pairs changed %d" % (iter,i,alphaPairsChanged)
if (alphaPairsChanged == 0): iter += 1
else: iter = 0
#print "iteration number: %d" % iter
return b,alphas def kernelTrans(X, A, kTup): #calc the kernel or transform data to a higher dimensional space
m,n = shape(X)
K = mat(zeros((m,1)))
if kTup[0]=='lin': K = X * A.T #linear kernel
elif kTup[0]=='rbf':
for j in range(m):
deltaRow = X[j,:] - A
K[j] = deltaRow*deltaRow.T
K = exp(K/(-1*kTup[1]**2)) #divide in NumPy is element-wise not matrix like Matlab
else: raise NameError('Houston We Have a Problem -- \
That Kernel is not recognized')
return K class optStruct:
def __init__(self,dataMatIn, classLabels, C, toler, kTup): # Initialize the structure with the parameters
self.X = dataMatIn
self.labelMat = classLabels
self.C = C
self.tol = toler
self.m = shape(dataMatIn)[0]
self.alphas = mat(zeros((self.m,1)))
self.b = 0
self.eCache = mat(zeros((self.m,2))) #first column is valid flag
self.K = mat(zeros((self.m,self.m)))
for i in range(self.m):
self.K[:,i] = kernelTrans(self.X, self.X[i,:], kTup) def calcEk(oS, k):
fXk = float(multiply(oS.alphas,oS.labelMat).T*oS.K[:,k] + oS.b)
Ek = fXk - float(oS.labelMat[k])
return Ek def selectJ(i, oS, Ei): #this is the second choice -heurstic, and calcs Ej
maxK = -1; maxDeltaE = 0; Ej = 0
oS.eCache[i] = [1,Ei] #set valid #choose the alpha that gives the maximum delta E
validEcacheList = nonzero(oS.eCache[:,0].A)[0]
if (len(validEcacheList)) > 1:
for k in validEcacheList: #loop through valid Ecache values and find the one that maximizes delta E
if k == i: continue #don't calc for i, waste of time
Ek = calcEk(oS, k)
deltaE = abs(Ei - Ek)
if (deltaE > maxDeltaE):
maxK = k; maxDeltaE = deltaE; Ej = Ek
return maxK, Ej
else: #in this case (first time around) we don't have any valid eCache values
j = selectJrand(i, oS.m)
Ej = calcEk(oS, j)
return j, Ej def updateEk(oS, k):#after any alpha has changed update the new value in the cache
Ek = calcEk(oS, k)
oS.eCache[k] = [1,Ek] def innerL(i, oS):
Ei = calcEk(oS, i)
if ((oS.labelMat[i]*Ei < -oS.tol) and (oS.alphas[i] < oS.C)) or ((oS.labelMat[i]*Ei > oS.tol) and (oS.alphas[i] > 0)):
j,Ej = selectJ(i, oS, Ei) #this has been changed from selectJrand
alphaIold = oS.alphas[i].copy(); alphaJold = oS.alphas[j].copy();
if (oS.labelMat[i] != oS.labelMat[j]):
L = max(0, oS.alphas[j] - oS.alphas[i])
H = min(oS.C, oS.C + oS.alphas[j] - oS.alphas[i])
else:
L = max(0, oS.alphas[j] + oS.alphas[i] - oS.C)
H = min(oS.C, oS.alphas[j] + oS.alphas[i])
if L==H:
#print "L==H";
return 0
eta = 2.0 * oS.K[i,j] - oS.K[i,i] - oS.K[j,j] #changed for kernel
if eta >= 0:
#print "eta>=0";
return 0
oS.alphas[j] -= oS.labelMat[j]*(Ei - Ej)/eta
oS.alphas[j] = clipAlpha(oS.alphas[j],H,L)
updateEk(oS, j) #added this for the Ecache
if (abs(oS.alphas[j] - alphaJold) < 0.00001):
#print "j not moving enough";
return 0
oS.alphas[i] += oS.labelMat[j]*oS.labelMat[i]*(alphaJold - oS.alphas[j])#update i by the same amount as j
updateEk(oS, i) #added this for the Ecache #the update is in the oppostie direction
b1 = oS.b - Ei- oS.labelMat[i]*(oS.alphas[i]-alphaIold)*oS.K[i,i] - oS.labelMat[j]*(oS.alphas[j]-alphaJold)*oS.K[i,j]
b2 = oS.b - Ej- oS.labelMat[i]*(oS.alphas[i]-alphaIold)*oS.K[i,j]- oS.labelMat[j]*(oS.alphas[j]-alphaJold)*oS.K[j,j]
if (0 < oS.alphas[i]) and (oS.C > oS.alphas[i]): oS.b = b1
elif (0 < oS.alphas[j]) and (oS.C > oS.alphas[j]): oS.b = b2
else: oS.b = (b1 + b2)/2.0
return 1
else: return 0 def smoP(dataMatIn, classLabels, C, toler, maxIter,kTup=('lin', 0)): #full Platt SMO
oS = optStruct(mat(dataMatIn),mat(classLabels).transpose(),C,toler, kTup)
iter = 0
entireSet = True; alphaPairsChanged = 0
while (iter < maxIter) and ((alphaPairsChanged > 0) or (entireSet)):
alphaPairsChanged = 0
if entireSet: #go over all
for i in range(oS.m):
alphaPairsChanged += innerL(i,oS)
#print "fullSet, iter: %d i:%d, pairs changed %d" % (iter,i,alphaPairsChanged)
iter += 1
else:#go over non-bound (railed) alphas
nonBoundIs = nonzero((oS.alphas.A > 0) * (oS.alphas.A < C))[0]
for i in nonBoundIs:
alphaPairsChanged += innerL(i,oS)
#print "non-bound, iter: %d i:%d, pairs changed %d" % (iter,i,alphaPairsChanged)
iter += 1
if entireSet: entireSet = False #toggle entire set loop
elif (alphaPairsChanged == 0): entireSet = True
#print "iteration number: %d" % iter
return oS.b,oS.alphas def calcWs(alphas,dataArr,classLabels):
X = mat(dataArr); labelMat = mat(classLabels).transpose()
m,n = shape(X)
w = zeros((n,1))
for i in range(m):
w += multiply(alphas[i]*labelMat[i],X[i,:].T)
return w
def img2vector(filename):
returnVect = zeros((1,1024))
fr = open(filename)
for i in range(32):
lineStr = fr.readline()
for j in range(32):
returnVect[0,32*i+j] = int(lineStr[j])
return returnVect def loadImages(dirName,num):
from os import listdir
hwLabels = []
trainingFileList = listdir(dirName)#load the training set
if trainingFileList[0] == '.DS_Store':
del trainingFileList[0]
m = len(trainingFileList)
trainingMat = zeros((m,1024))
for i in range(m):
fileNameStr = trainingFileList[i]
fileStr = fileNameStr.split('.')[0]#take off .txt
classNumStr = int(fileStr.split('_')[0])
if classNumStr == num: hwLabels.append(-1)
else: hwLabels.append(1)
trainingMat[i,:] = img2vector('%s/%s' % (dirName, fileNameStr))
return trainingMat, hwLabels def training(kTup=('rbf', 10)):
num = 6;p = 0.01
while num < 10:
dataArr,labelArr = loadImages('trainingDigits',num)
b,alphas = smoP(dataArr, labelArr, 200, 0.0001, 10000, kTup)
datMat=mat(dataArr); labelMat = mat(labelArr).transpose()
svInd=nonzero(alphas.A>0)[0]
#print svInd,len(svInd)
sVs=datMat[svInd]
labelSV = labelMat[svInd]
alpha = alphas[svInd]
#print sVs.shape,labelSV.shape,alpha.shape
print str(num)+":"+"there are %d Support Vectors" % shape(sVs)[0]
datMat=mat(dataArr); labelMat = mat(labelArr).transpose()
m,n = shape(datMat)
errorCount = 0
for i in range(m):
kernelEval = kernelTrans(sVs,datMat[i,:],kTup)
predict=kernelEval.T * multiply(labelSV,alpha) + b
if sign(predict)!=sign(labelArr[i]): errorCount += 1
print str(num)+":"+"the training error rate is: %f" % (float(errorCount)/m)
if float(errorCount)/m < p:
savez(str(num)+'re.npz',sVs,labelSV,alpha,b)
num = num +1
p = 0.01
else:
p = p + 0.01
def test(kTup=('rbf', 10)):
for num in range(0,10):
r = load(str(num)+'re.npz')
sVs = r['arr_0']
labelSV = r['arr_1']
alpha = r['arr_2']
b = r['arr_3']
dataArr,labelArr = loadImages('testDigits',num)
errorCount = 0
datMat=mat(dataArr); labelMat = mat(labelArr).transpose()
m,n = shape(datMat)
for i in range(m):
kernelEval = kernelTrans(sVs,datMat[i,:],kTup)
predict=kernelEval.T * multiply(labelSV,alpha) + b
if sign(predict)!=sign(labelArr[i]): errorCount += 1
print str(num)+":"+"the test error rate is: %f" % (float(errorCount)/m) #training(('rbf',20))
#test(kTup=('rbf', 20))

手写数字0-9的识别代码(SVM支持向量机)的更多相关文章

  1. 使用TensorFlow的卷积神经网络识别手写数字(3)-识别篇

    from PIL import Image import numpy as np import tensorflow as tf import time bShowAccuracy = True # ...

  2. [Python]基于CNN的MNIST手写数字识别

    目录 一.背景介绍 1.1 卷积神经网络 1.2 深度学习框架 1.3 MNIST 数据集 二.方法和原理 2.1 部署网络模型 (1)权重初始化 (2)卷积和池化 (3)搭建卷积层1 (4)搭建卷积 ...

  3. linux-基于tensorflow2.x的手写数字识别-基于MNIST数据集

    数据集 数据集下载MNIST 首先读取数据集, 并打印相关信息 包括 图像的数量, 形状 像素的最大, 最小值 以及看一下第一张图片 path = 'MNIST/mnist.npz' with np. ...

  4. 使用神经网络来识别手写数字【译】(三)- 用Python代码实现

    实现我们分类数字的网络 好,让我们使用随机梯度下降和 MNIST训练数据来写一个程序来学习怎样识别手写数字. 我们用Python (2.7) 来实现.只有 74 行代码!我们需要的第一个东西是 MNI ...

  5. Pytorch1.0入门实战一:LeNet神经网络实现 MNIST手写数字识别

    记得第一次接触手写数字识别数据集还在学习TensorFlow,各种sess.run(),头都绕晕了.自从接触pytorch以来,一直想写点什么.曾经在2017年5月,Andrej Karpathy发表 ...

  6. 4.2tensorflow多层感知器MLP识别手写数字最易懂实例代码

    自己开发了一个股票智能分析软件,功能很强大,需要的点击下面的链接获取: https://www.cnblogs.com/bclshuai/p/11380657.html 1.1  多层感知器MLP(m ...

  7. 【转】机器学习教程 十四-利用tensorflow做手写数字识别

    模式识别领域应用机器学习的场景非常多,手写识别就是其中一种,最简单的数字识别是一个多类分类问题,我们借这个多类分类问题来介绍一下google最新开源的tensorflow框架,后面深度学习的内容都会基 ...

  8. C#中调用Matlab人工神经网络算法实现手写数字识别

    手写数字识别实现 设计技术参数:通过由数字构成的图像,自动实现几个不同数字的识别,设计识别方法,有较高的识别率 关键字:二值化  投影  矩阵  目标定位  Matlab 手写数字图像识别简介: 手写 ...

  9. Python 手写数字识别-knn算法应用

    在上一篇博文中,我们对KNN算法思想及流程有了初步的了解,KNN是采用测量不同特征值之间的距离方法进行分类,也就是说对于每个样本数据,需要和训练集中的所有数据进行欧氏距离计算.这里简述KNN算法的特点 ...

  10. CNN 手写数字识别

    1. 知识点准备 在了解 CNN 网络神经之前有两个概念要理解,第一是二维图像上卷积的概念,第二是 pooling 的概念. a. 卷积 关于卷积的概念和细节可以参考这里,卷积运算有两个非常重要特性, ...

随机推荐

  1. 初学者应该怎么学习前端?web前端的发展路线大剖析!

    写在最前: 优秀的Web前端开发工程师要在知识体系上既要有广度和深度!应该具备快速学习能力. 前端开发工程师不仅要掌握基本的Web前端开发技术,网站性能优化.SEO和服务器端的基础知识,而且要学会运用 ...

  2. Android 如何利用Activity的Dialog风格完成弹出框设计

    在我们使用Dialog时,如果需要用到很多自己设计的控件,虽然可以让弹出框显示出我们需要的界面,但却无法找到地方完成控制代码的编写,如何解决这个问题呢,我们可以将Activity伪装成Dialog弹出 ...

  3. [Python]输出中文报错的解决方法

    问题现象:在PyCharm工具编辑python语句输出中文时,程序报错. 解决方法(2种): 1.在代码开头加#coding=utf-8(注意要加#) 2.还是在代码开头加#-*- coding: u ...

  4. VS远程调试虚拟机中的程序

    1.  设置VS项目属性 => 调试页   例子如下 远程命令: C:\test.exe 工作目录 : C:\ 远程服务器名称:  192.168.xx.xx  查看网络共享 => 本地连 ...

  5. ABC3D创客项目:小风扇

    风扇是我们纳凉的好帮手,然而大多的风扇都体积庞大不易携带.利用电池进行供电能让风扇变得更加便捷,下面我们利用电池供电的原理制作出一个风扇. 工作原理: 这个OK风扇的主要能源来自于后面的7号电池,风扇 ...

  6. android stuido ndk 开发

    开发环境: Android studio 1.0.2 ndk android-ndk-r10d-windows-x86_64 ------------------------------------ ...

  7. false - (失败的)什么都不做

    总览 (SYNOPSIS) false [忽略命令行参数] false OPTION 描述 (DESCRIPTION) 程序 结束 时, 产生 表示 失败 的 状态码. 下列的 选项 没有 简写 形式 ...

  8. iOS利用UIDocumentInteractionController和Quick Look打开或预览文档

    在App的开发过程中,我们避免不了要打开软件中的文件,例如:Excel文件,Word文件,图片文件等不同格式的文件或者想要通过第三方的App来打开这些文件,那么我们就要用到UIDocumentInte ...

  9. React框架搭建单页面应用package.json基本包和依赖包

    { //依赖包 "devDependencies": { //babel "babel-core": "6.24.1", "bab ...

  10. C++系统学习之五:表达式

    表达式由一个或多个运算对象组成,对表达式求值将得到一个结果.字面值和变量是最简单的表达式,其结果就是字面值和变量的值.把一个运算符和一个或多个运算对象组合起来可以生成较复杂的表达式. 基础 1.基本概 ...