# Neural network octave implementation

Can anyone explain me this:

``````Theta1_grad(:, 1) = Theta1_grad(:, 1) ./ m;

Theta1_grad(:, 2:end) = Theta1_grad(:, 2:end) ./ m + ((lambda/m) * Theta1(:, 2:end));
``````

I'm implementing in python, and I don't know Octave, I just found this neural network implementation, but I don't understand what is this doing.

Reference: http://feature-space.com/en/document49.pdf - Page 12 (2.5)

## EDIT:

Never mind, I think its trying to not to modify 1st column.

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`Theta1_grad(:, 1)` gets the first column of the matrix `Theta1_grad` then it divides each element of this vector by the value of `m`

`Theta1_grad(:, 2:end)` gets the rest of the matrix starting from column 2 to the end (basically all the columns except the first column)

Typically the first column is set to `1` to allow for estimating the model intercept

In general, having `.` before the arithmetic operation in Octave means element by element operation, for example, `A * B` is normal matrix multiplication, but `A .* B` is element by element multiplication

Edit:

This equation is for a regularized neural network (to reduce over-fitting risk)

`````` Theta1_grad(:, 2:end) = Theta1_grad(:, 2:end) ./ m + ((lambda/m) * Theta1(:, 2:end));
``````

I do not see the entire code but I believe lambda is not the learning rate, it is the regularization parameter (or the penalty) and it is multiplied by `Theta1` itself not the gradient.

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just confuse with this- Theta1_grad(:, 2:end) = Theta1_grad(:, 2:end) ./ m + ((lambda/m) * Theta1(:, 2:end)); why its dividing by m and then adding same thing with multiplying learning rate, I don't understand – code muncher Feb 8 '13 at 4:07
See my updated answer, basically it is not adding the same thing the first is the gradient and the second is theta itself – iTech Feb 8 '13 at 4:24
right, lamda is learning rate, Theta1 is weight vector. Now somewhat everything make sense ... possibly this's what I need - theta1_grad to update my weight vector - theta1. – code muncher Feb 8 '13 at 4:28