2021
DOI: 10.48550/arxiv.2109.10596
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Fully probabilistic design for knowledge fusion between Bayesian filters under uniform disturbances

Abstract: This paper considers the problem of Bayesian transfer learning-based knowledge fusion between linear state-space processes driven by uniform state and observation noise processes. The target task conditions on probabilistic state predictor(s) supplied by the source filtering task(s) to improve its own state estimate. A joint model of the target and source(s) is not required and is not elicited. The resulting decision-making problem for choosing the optimal conditional target filtering distribution under incomp… Show more

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References 36 publications
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