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  • 数学之路(3)-机器学习(3)-机器学习算法-神经网络[16]

    我们调用第三方的神经网络python组件继续进行更复杂的函数拟合,这次拟合一个比sin函数更复杂的函数f(x)=sin(x)*0.5+cos(x)*0.5

    python代码如下

    #!/usr/bin/env python
    #-*- coding: utf-8 -*-
    #bp ann 函数拟合sin*0.5+cos*0.5
    import neurolab as nl
    import numpy as np
    import matplotlib.pyplot as plt
    isdebug=False
    
    #x和d样本初始化
    train_x =[]
    d=[]
    samplescount=1000
    myrndsmp=np.random.rand(samplescount)
    for yb_i in xrange(0,samplescount):
        train_x.append([myrndsmp[yb_i]*4*np.pi-2*np.pi])
    for yb_i in xrange(0,samplescount):
        d.append(np.sin(train_x[yb_i])*0.5+np.cos(train_x[yb_i])*0.5)
    
    myinput=np.array(train_x)   
    mytarget=np.array(d)
    
    bpnet = nl.net.newff([[-2*np.pi, 2*np.pi]], [5, 1])
    err = bpnet.train(myinput, mytarget, epochs=800, show=100, goal=0.02)
    
    simd=[]
    for xn in xrange(0,len(train_x)):
    #        print "====================="
    #        print u"样本:%f=> "%(train_x[xn][0])
            simd.append(bpnet.sim([train_x[xn]])[0][0])
    #        print simd[xn]
    #        print u"--正确目标值--"
    #        print d[xn]
    #        print "====================="        
    
    temp_x=[]
    temp_y=simd
    temp_d=[]
    i=0
    for mysamp in train_x:
         temp_x.append(mysamp[0])
         temp_d.append(d[i][0])
         i+=1
                     
    x_max=max(temp_x)
    x_min=min(temp_x)
    y_max=max(max(temp_y),max(d))+0.2
    y_min=min(min(temp_y),min(d))-0.2
        
    plt.xlabel(u"x")
    plt.xlim(x_min, x_max)
    plt.ylabel(u"y")
    plt.ylim(y_min, y_max)
    plt.title("http://blog.csdn.net/myhaspl" )
    lp_x1 = temp_x
    lp_x2 = temp_y
    lp_d = temp_d
    plt.plot(lp_x1, lp_x2, 'r*')
    plt.plot(lp_x1,lp_d,'b*')
    plt.show()
    


    >>> runfile(r'I:ook_progann_bpnhsincos1.py', wdir=r'I:ook_prog')
    Epoch: 100; Error: 0.528978849953;
    Epoch: 200; Error: 0.33336612138;
    Epoch: 300; Error: 0.253337487331;
    Epoch: 400; Error: 0.20472927421;
    Epoch: 500; Error: 0.202153963051;
    Epoch: 600; Error: 0.19900731385;
    Epoch: 700; Error: 0.197426245762;
    Epoch: 800; Error: 0.193607559472;
    The maximum number of train epochs is reached
    >>> 

    拟合效果为:



    本博客所有内容是原创,如果转载请注明来源

    http://blog.csdn.net/u010255642

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  • 原文地址:https://www.cnblogs.com/riskyer/p/3295199.html
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