Recent studies have shown how regularization may play an important role in linear system identification. An effective approach consists of searching for the impulse response in a high-dimensional space, e.g. a reproducing kernel Hilbert space (RKHS). Complexity is then controlled using a regularizer, e.g. the RKHS norm, able to encode smoothness and stability information. Examples are RKHSs induced by the so called stable spline or or tuned-correlated (TC) kernels which contain a parameter that regulates impulse response exponential decay. In this paper we derive non asymptotic upper bounds on the l2 error of these regularized schemes and study their optimality in order (in the minimax sense). Under white noise inputs and Gaussian measureme...