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Robust Control Methods for On-Line Statistical Learning
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  • Research Article
  • Open Access
  • Published: 01 June 2001

Robust Control Methods for On-Line Statistical Learning

  • Enrico Capobianco1 

EURASIP Journal on Advances in Signal Processing volume 2001, Article number: 287964 (2001) Cite this article

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Abstract

The issue of controlling that data processing in an experiment results not affected by the presence of outliers is relevant for statistical control and learning studies. Learning schemes should thus be tested for their capacity of handling outliers in the observed training set so to achieve reliable estimates with respect to the crucial bias and variance aspects. We describe possible ways of endowing neural networks with statistically robust properties by defining feasible error criteria. It is convenient to cast neural nets in state space representations and apply both Kalman filter and stochastic approximation procedures in order to suggest statistically robustified solutions for on-line learning.

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Authors and Affiliations

  1. CWI, Kruislaan 413, Amsterdam, 1098-SJ, The Netherlands

    Enrico Capobianco

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  1. Enrico Capobianco
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Correspondence to Enrico Capobianco.

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Cite this article

Capobianco, E. Robust Control Methods for On-Line Statistical Learning. EURASIP J. Adv. Signal Process. 2001, 287964 (2001). https://doi.org/10.1155/S1110865701000178

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  • Received: 08 January 2001

  • Revised: 19 April 2001

  • Published: 01 June 2001

  • DOI: https://doi.org/10.1155/S1110865701000178

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Keywords

  • artificial learning
  • statistical control algorithms
  • robustness and efficiency of estimators
  • maximum likelihood inference
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