# Neural Network - updating weight matrix - back-propagation algorithm

I'm implementing neural network with the help of Prof Andrew Ng lectures or this, using figure 31 Algorithm.

I think I understood forward propagation and backward propagation fine, but confuse with updating weight (theta) after each iteration.

Q1. When and HOW to update weight (theta) matrix - theta1, theta2?

Q2. What is big Delta for? [Solved, thanks @xhudik]

Q3. do we have to add +1 (bias unit in input and hidden layer?)

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The meaning of capital delta is explained directly below the pseudocode: It's an accumulator for the weight updates; The forward propagation is done for all training samples with the same (old) weight matrix. Then the weight matrix is updated. I think this is called batch learning. –  nikie Feb 6 '13 at 18:26
@nikie could you please elaborate, how to weight matrix is updated? I couldn't find anything in that or may be I'm missing something –  code muncher Feb 6 '13 at 18:38
If you're using gradient descent, you'll just add the gradients times some learning rate to the weights. –  nikie Feb 6 '13 at 20:13
I'm using back-prapogation algo, so is it like - w (weight matrix for l layer) = w + learning_rate * delta(of that layer) * x (input vector)? I'm really confused with that ... may be its stupid question but still! –  code muncher Feb 6 '13 at 21:24
@codemuncher i'm not very good at neural networks, but AFAIK your equation is right, however, the best way how tto prove it is to implement some algorithm and compare results with some already working NN (e.g. some task in course Machine Learning at coursera.org taught by Andrew Ng) - good luck! –  xhudik Feb 9 '13 at 11:51