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  • 自己动手写一个神经网络

    import numpy as np
    
    def sigmod(x):
        return 1 / (1 + np.exp(-x))
    
    def deriv_sigmod(x):
        fx = sigmod(x)
        return fx * (1 - fx)
    
    def mse_loss(y_true, y_pred):
        return ((y_true - y_pred)**2).mean()
    
    class OurNeuralNetwork:
        def __init__(self):
            #weights
            self.w1 = np.random.normal()
            self.w2 = np.random.normal()
            self.w3 = np.random.normal()
            self.w4 = np.random.normal()
            self.w5 = np.random.normal()
            self.w6 = np.random.normal()
    
            #biases
            self.b1 = np.random.normal()
            self.b2 = np.random.normal()
            self.b3 = np.random.normal()
    
        def feedforward(self,x):
            #x 是一个有两个元素的numpy数组
            h1 = sigmod(self.w1 * x[0] + self.w2 * x[1] + self.b1)
            h2 = sigmod(self.w3 * x[0] + self.w4 * x[1] + self.b2)
            o1 = sigmod(self.w5 * h1 + self.w6 * h2 + self.b3)
            return o1
        def train(self, data, all_y_trues):
            learn_rate = 0.1
            epoches = 1000
    
            for epoch in range(epoches):
                for x, y_true in zip(data, all_y_trues):
                    sum_h1 = self.w1 * x[0] + self.w2 * x[1] + self.b1
                    h1 = sigmod(sum_h1)
    
                    sum_h2 = self.w3 * x[0] + self.w4 * x[1] + self.b2
                    h2 = sigmod(sum_h2)
    
                    sum_o1 = self.w5 * h1 + self.w6 * h2 + self.b3
                    o1 = sigmod(sum_o1)
    
                    y_pred = o1
    
                    #开始计算偏导数
                    #命名规则 d_L_d_w1 代表 L对w1的偏导数
    
                    d_L_d_ypred = -2 * (y_true - y_pred)
    
                    #Neuron o1
                    d_ypred_d_w5 = h1 * deriv_sigmod(sum_o1)
                    d_ypred_d_w6 = h2 * deriv_sigmod(sum_o1)
                    d_ypred_d_b3 = deriv_sigmod(sum_o1)
    
                    d_ypred_d_h1 = self.w5 * deriv_sigmod(sum_o1)
                    d_ypred_d_h2 = self.w6 * deriv_sigmod(sum_o1)
    
                    #Neuron h1
                    d_h1_d_w1 = x[0] * deriv_sigmod(sum_h1)
                    d_h1_d_w2 = x[1] * deriv_sigmod(sum_h1)
                    d_h1_d_b1 = deriv_sigmod(sum_h1)
    
                    #Neuron h2
                    d_h2_d_w3 = x[0] * deriv_sigmod(sum_h2)
                    d_h2_d_w4 = x[1] * deriv_sigmod(sum_h2)
                    d_h2_d_b2 = deriv_sigmod(sum_h2)
    
    
                    #---------更新权重和偏置
                    #Neuron h1
                    self.w1 -= learn_rate * d_L_d_ypred * d_ypred_d_h1 * d_h1_d_w1
                    self.w2 -= learn_rate * d_L_d_ypred * d_ypred_d_h1 * d_h1_d_w2
                    self.b1 -= learn_rate * d_L_d_ypred * d_ypred_d_h1 * d_h1_d_b1
    
                    #Neuron h2
                    self.w3 -= learn_rate * d_L_d_ypred * d_ypred_d_h2 * d_h2_d_w3
                    self.w4 -= learn_rate * d_L_d_ypred * d_ypred_d_h2 * d_h2_d_w4
                    self.b2 -= learn_rate * d_L_d_ypred * d_ypred_d_h2 * d_h2_d_b2
    
                    #Neuron o1
                    self.w5 -= learn_rate * d_L_d_ypred * d_ypred_d_w5
                    self.w6 -= learn_rate * d_L_d_ypred * d_ypred_d_w6
                    self.b3 -= learn_rate * d_L_d_ypred * d_ypred_d_b3
    
                #每个epoch结束以后计算总的损失
                if epoch % 10 == 0:
                    y_preds = np.apply_along_axis(self.feedforward, 1, data)
                    print (y_preds)
                    loss = mse_loss(all_y_trues, y_preds)
                    print ("Epoch %d loss: %.3f" % (epoch, loss))
    data = np.array([
        [-2, -1],
        [25, 6],
        [17, 4],
        [-15, -6]
    ])
    
    all_y_trues = np.array([1, 0, 0, 1]
    
    )
    
    #训练神经网络
    network = OurNeuralNetwork()
    network.train(data, all_y_trues)
    
    emily = np.array([-7, -3])
    frank = np.array([20, 2])
    
    print ("Emily: %.3f" % network.feedforward(emily))
    print ("Frank: %.3f" % network.feedforward(frank))
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  • 原文地址:https://www.cnblogs.com/cnugis/p/10685951.html
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