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backpropagation - My two layer neural network model doesn't converge

I am training a two layer neural network. I waited for 15000 epochs, still model doesn't converge.

ans = []
for i in range(1000):
    x1,y1 = random.uniform(-3,3),random.uniform(-3,3)
    if x1*x1 + y1 * y1 < 1:
        ans.append([x1,y1,0])
    elif x1*x1 + y1 * y1 >= 2 and x1*x1 + y1 * y1 <=8:
        ans.append([x1,y1,1])

data = pd.DataFrame(ans)
print(data.shape)
X = np.array(data[[0,1]])
y = np.array(data[2])

I am generating random points generating data. the data looks like something like this. enter image description here

weights_layer1 = np.random.normal(scale=1 / 10**.5, size=(2,20))
bias1 = np.zeros((1,20))
bias2 = np.zeros((1,1))
weights_layer2 = np.random.normal(scale=1 / 10**.5, size=(20,1))
for e in range(15000):
    for x,y1 in zip(X,y):
         x = x.reshape(1,2)
         layer1 = sigmoid(np.dot(x,weights_layer1)+bias1)
         layer2 = sigmoid(np.dot(layer1,weights_layer2)+bias2)
        
        dk = (y1-layer2)*layer2*(1-layer2)
        dw2 = learnrate * dk * layer1.T
        dw2 =dw2.reshape(weights_layer2.shape)
   # print(dw2.shape)
    
    
        weights_layer2 += dw2
   # bias2 += dk * learnrate
    
        dj = weights_layer2.T* layer1*(1-layer1)*dk
        dw1 = learnrate * np.dot(x.T,dj)
     

I am calculating loss in this manner.

loss = 0
for x,y1 in zip(X,y):
    layer1 = sigmoid(np.dot(x,weights_layer1))
    layer2 = sigmoid(np.dot(layer1,weights_layer2))
    loss += (layer2 - y1)**2
    
    
print(loss)

cant find what is going wrong,can you see anything? Thanks. I trained the same with pytorch it is converging fine.

the final model looks like this on trained data. but on test data it is worse. enter image description here

question from:https://stackoverflow.com/questions/65936064/my-two-layer-neural-network-model-doesnt-converge

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1 Answer

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After few hours of trying out, I found the problem. This network doesn't converge without biases. Used biases it converged in 5000 epochs.


与恶龙缠斗过久,自身亦成为恶龙;凝视深渊过久,深渊将回以凝视…
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