AI RESEARCH

Computation-Aware Kalman Filtering with Model Selection for Neural Dynamics

arXiv CS.AI

ArXi:2606.01468v1 Announce Type: cross Due to their explicit priors and ability to model uncertainty, Bayesian methods have played a major role in dynamical latent variable modeling of single-cell neural recordings. However, modern-sized datasets have made overparameterized deep networks the preferred methods of choice due to their predictive power and favorable computational scaling. While many posterior approximations exist, all incur approximation errors.