Multivariate Shannon's entropy for adaptive IIR filtering via kernel density estimators

In supervised infinite impulse response adaptive filtering, approximate gradient-based approaches are the usual option among optimisation methods. When based on the mean squared error (MSE) criterion, however, these approaches may present biased solutions in noisy scenarios. In that sense, instead o...

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Published inElectronics letters Vol. 55; no. 15; pp. 859 - 861
Main Authors Fantinato, D.G, Silva, D.G, Attux, R, Neves, A
Format Journal Article
LanguageEnglish
Published The Institution of Engineering and Technology 25.07.2019
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ISSN0013-5194
1350-911X
1350-911X
DOI10.1049/el.2019.1430

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Summary:In supervised infinite impulse response adaptive filtering, approximate gradient-based approaches are the usual option among optimisation methods. When based on the mean squared error (MSE) criterion, however, these approaches may present biased solutions in noisy scenarios. In that sense, instead of the MSE, the authors propose the use of Shannon's error entropy, an information theoretic learning criterion, which is able to extract higher order statistics from the underlying signals. In particular, a multivariate entropy definition is considered, which is applied to derive a Recursive Prediction Error-based algorithm. The performance analyses are carried out in the context of the supervised channel equalisation problem, with results very favourable to the proposal, in high and low noise level environments.
ISSN:0013-5194
1350-911X
1350-911X
DOI:10.1049/el.2019.1430