优化算法笔记

主要介绍了各个主流神经网络优化算法的代码实现

SGD

while True:
    dx = compute_gradient(x)
    x -= learning_rate * dx

SGD + Momentum

v = 0
rv = 0.9
while True:
    dx = compute_gradient(x)
    v = rv * v + dx
    x -= learning_rate * v

AdaGrad

grad_square = 0
while True:
    dx = compute_gradient(x)
    grad_square += dx * dx
    x -= learning_rate * dx / (sqrt(grad_square) + 1e-7)

RMSProp

grad_square = 0
decay_rate= 0.9
while True:
    dx = compute_gradient(x)
    grad_square += decay_rate* grad_square + (1 - decay_rate) * dx * dx
    x -= learning_rate * dx / (sqrt(grad_square) + 1e-7)

Adam

first_momentum, second_momentum = 0, 0
beta1, beta2 = 0.9, 0.999
epoches = 1000
for e in range(1, epoches):
    dx = compute_gradient(x)
    #Momentum
    first_momentum = beta1 * first_momentum  + (1 - beta1) * dx
    second_momentum = beta2 * second_momentum + (1 - beta2) * dx *dx
    #Bias correction
    first_unbias = first_momentum / (1 - beat1 ** e)
    second_unbias = second_momentum / (1 - beta2 ** e)
    #AdaGrad/RMSProp
    x -= learning_rate * first_unbias / (sqrt(second_unbias) + 1e-7)

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转载自blog.csdn.net/qq_35327651/article/details/80117018
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