Statistical Inference for Stochastic Processes
Viking: variational Bayesian variance tracking
Joseph De Vilmarest
1, 2, 3
,
Olivier Wintenberger
3, 4
1
Viking Conseil, Paris, France
|
2
Électricité de France R &D, Palaiseau, France
|
Publication type: Journal Article
Publication date: 2024-05-30
scimago Q3
SJR: 0.363
CiteScore: 1.3
Impact factor: 0.7
ISSN: 13870874, 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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