For the loss function with L2 regularization:
$$Loss\ function + \lambda||w||^2_2.$$
I think following three things are equivalent with large probability:
large estimation value of $w^i$ <=> large estimation variance of $w^i$ <=> large probability of overfitting.
Is there any intuitive way to explain above conclusion?
One way is from the Bayesian's point, L2 regularization corresponds the $(0,\sigma^2)$-normal priority distribution of $w,$ to appear the large value, we need the large variance $\sigma^2.$ I cannot guarantee the statement is correct and definitely is not intuitive.