Theta1_grad(:, 1) gets the first column of the matrix
Theta1_grad then it divides each element of this vector by the value of
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
Reading a quick Octave, would help you.
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.