In Chapter6.10.3 'Net pruning', page53 of **An introduction to neural networks __ Kevin Gurney**. It introduce the `complexity penalty`

into the back-propagation training algorithm. The `complexity penalty`

is like as follow:

$$ E_c=\sum_{i}w_i $$

$$ E = E_t + \lambda E_c $$

`Et`

is error used so far based on input-output differences.

Then performing gradient descent on this total risk E.

**My question** : After doing derivation. The `complexity penalty`

will dissapear. How can it affect the training