LGSPOct 21, 2022

online and lightweight kernel-based approximated policy iteration for dynamic p-norm linear adaptive filtering

arXiv:2210.11755v11 citationsh-index: 24
Originality Incremental advance
AI Analysis

This work addresses outlier robustness in adaptive filtering for signal processing applications, presenting an incremental improvement through a novel kernel-based reinforcement learning approach.

The paper tackles the problem of dynamically selecting the optimal p-norm to combat outliers in linear adaptive filtering without prior knowledge of outlier distributions, achieving superior performance over existing schemes in numerical tests on synthetic data.

This paper introduces a solution to the problem of selecting dynamically (online) the ``optimal'' p-norm to combat outliers in linear adaptive filtering without any knowledge on the probability density function of the outliers. The proposed online and data-driven framework is built on kernel-based reinforcement learning (KBRL). To this end, novel Bellman mappings on reproducing kernel Hilbert spaces (RKHSs) are introduced. These mappings do not require any knowledge on transition probabilities of Markov decision processes, and are nonexpansive with respect to the underlying Hilbertian norm. The fixed-point sets of the proposed Bellman mappings are utilized to build an approximate policy-iteration (API) framework for the problem at hand. To address the ``curse of dimensionality'' in RKHSs, random Fourier features are utilized to bound the computational complexity of the API. Numerical tests on synthetic data for several outlier scenarios demonstrate the superior performance of the proposed API framework over several non-RL and KBRL schemes.

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