Fully probabilistic design for knowledge fusion between Bayesian filters under uniform disturbances

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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 incomplete modelling is solved via fully probabilistic design (FPD), i.e. via appropriate minimization of Kullback–Leibler divergence (KLD). The resulting FPD-optimal target learner is robust, in the sense that it can reject poor-quality source knowledge. In addition, the fact that this Bayesian transfer learning (BTL) scheme does not depend on a model of interaction between the source and target tasks ensures robustness to the misspecification of such a model. The latter is a problem that affects conventional transfer learning methods. The properties of the proposed BTL scheme are demonstrated via extensive simulations, and in comparison with two contemporary alternatives.

论文关键词:Knowledge fusion,Bayesian transfer learning,Fully probabilistic design,State–space models,Bounded noise,Bayesian inference

论文评审过程:Received 28 July 2021, Revised 25 October 2021, Accepted 2 December 2021, Available online 9 December 2021, Version of Record 6 January 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.107879