A General Method for Amortizing Variational Filtering

Marino, Joseph, Cvitkovic, Milan, Yue, Yisong

Neural Information Processing Systems 

We introduce the variational filtering EM algorithm, a simple, general-purpose method for performing variational inference in dynamical latent variable models using information from only past and present variables, i.e. filtering. The algorithm is derived from the variational objective in the filtering setting and consists of an optimization procedure at each time step. By performing each inference optimization procedure with an iterative amortized inference model, we obtain a computationally efficient implementation of the algorithm, which we call amortized variational filtering. We present experiments demonstrating that this general-purpose method improves inference performance across several recent deep dynamical latent variable models.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found