Aim: To find the coefficients for the regression line (hyperplane in case of multiple variables?) that models the data best. Let's call this w
What is the difference between:
1) Estimating using MAP: $w=(XX^T+\lambda I )^{-1}Xy^T$ where $X$ is the input training data and $y$ is the training outputs
and
2) Using a neural network to perform regression (I don't know how this is implemented)
(and any other method used for linear regression)