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我正在尝试实现感知器算法,但得到的结果不一致;我注意到权重的初始化产生了很大的影响。有什么我公然做错了吗?谢谢!

import numpy as np

def train(x,y):

    lenWeights = len(x[1,:]);
    weights = np.random.uniform(-1,1,size=lenWeights)
    bias = np.random.uniform(-1,1);
    learningRate = 0.01;
    t = 1;
    converged = False;

# Perceptron Algorithm

while not converged and t < 100000:
    targets = [];
    for i in range(len(x)):

            # Calculate output of the network
            output = ( np.dot(x[i,:],weights) ) + bias;

            # Perceptron threshold decision
            if (output > 0):
                target = 1;
            else:
                target = 0;

            # Calculate error and update weights
            error = target - y[i];

            weights = weights + (x[i,:] * (learningRate * error) );

            bias = bias + (learningRate * error);

            targets.append(target);

            t = t + 1;

    if ( list(y) == list(targets) ) == True:
        converged = True;


return weights,bias

def test(weights, bias, x):

    predictions = [];

    for i in range(len(x)):

        # Calculate w'x + b
        output = ( np.dot(x[i,:],weights) ) + bias;

        # Get decision from hardlim function
        if (output > 0):
            target = 1;
        else:
            target = 0;

        predictions.append(target);

    return predictions

if __name__ == '__main__':

    # Simple Test

    x = np.array( [  [0,1], [1,1] ] );
    y = np.array( [ 0, 1 ] );

    weights,bias = train(x,y);
    predictions = test(weights,bias,x);

    print predictions
    print y
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1 回答 1

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感知器不是全局优化的,因此训练结果不会一致(每次运行算法时它们可能会有所不同),并且它取决于(除其他外)权重初始化。这是非凸函数梯度优化的特征(对感知器进行三角化就是一个例子),而不是实现问题。

于 2014-01-28T07:20:55.550 回答