Learning stochastic filtering
Research output: Contribution to journal › Letter › Contributed › peer-review
Contributors
Abstract
We quantify the performance of approximations to stochastic filtering by the Kullback-Leibler divergence to the optimal Bayesian filter. Using a two-state Markov process that drives a Brownian measurement process as prototypical test case, we compare two stochastic filtering approximations: a static low-pass filter as baseline, and machine learning of Volterra expansions using nonlinear Vector Auto-Regression (nVAR). We highlight the crucial role of the chosen performance metric, and present two solutions to the specific challenge of predicting a likelihood bounded between 0 and 1.
Details
Original language | English |
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Article number | 31002 |
Journal | Europhysics letters |
Volume | 140 |
Issue number | 3 |
Publication status | Published - 1 Nov 2022 |
Peer-reviewed | Yes |
External IDs
Scopus | 85142530314 |
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