Statistical Inference for Stochastic Processes

Viking: variational Bayesian variance tracking

Publication typeJournal Article
Publication date2024-05-30
scimago Q3
SJR0.363
CiteScore1.3
Impact factor0.7
ISSN13870874, 15729311
Abstract
We consider the problem of robust and adaptive time series forecasting in an uncertain environment. We focus on the inference in state-space models under unknown time-varying noise variances and potential misspecification (violation of the state-space data generation assumption). We introduce an augmented model in which the variances are represented by auxiliary Gaussian latent variables in a tracking mode. The inference relies on the online variational Bayesian methodology, which minimizes a Kullback–Leibler divergence at each time step. We observe that optimizing the Kullback–Leibler divergence leads to an extension of the Kalman filter. We design a novel algorithm named Viking, using second-order bounds for the auxiliary latent variables, whose minima admit closed-form solutions. The main step of Viking does not coincide with the standard Kalman filter when the variances of the state-space model are uncertain. Experiments on synthetic and real data show that Viking behaves well and is robust to misspecification.
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