1. Fully probabilistic design for knowledge fusion between Bayesian filters under uniform disturbances
- Author
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Lenka Kuklišová Pavelková, Ladislav Jirsa, and Anthony Quinn
- Subjects
FOS: Computer and information sciences ,Computer Science - Machine Learning ,Information Systems and Management ,Artificial Intelligence ,Software ,Machine Learning (cs.LG) ,Management Information Systems - 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 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., Comment: 39 pages
- Published
- 2022