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Incremental Inference of Collective Graphical Models | IEEE Journals & Magazine | IEEE Xplore

Incremental Inference of Collective Graphical Models


Abstract:

We consider incremental inference problems from aggregate data for collective dynamics. In particular, we address the problem of estimating the aggregate marginals of a M...Show More

Abstract:

We consider incremental inference problems from aggregate data for collective dynamics. In particular, we address the problem of estimating the aggregate marginals of a Markov chain from noisy aggregate observations in an incremental (online) fashion. We propose a sliding window Sinkhorn belief propagation (SW-SBP) algorithm that utilizes a sliding window filter of the most recent noisy aggregate observations along with encoded information from discarded observations. Our algorithm is built upon the recently proposed multi-marginal optimal transport based SBP algorithm that leverages standard belief propagation and Sinkhorn algorithm to solve inference problems from aggregate data. We demonstrate the performance of our algorithm on applications such as inferring population flow from aggregate observations.
Published in: IEEE Control Systems Letters ( Volume: 5, Issue: 2, April 2021)
Page(s): 421 - 426
Date of Publication: 16 June 2020
Electronic ISSN: 2475-1456

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