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Optimally Compressed Nonparametric Online Learning

Alec Koppel, Amrit Singh Bedi, Ketan Rajawat, Brian M. Sadler

Year
2019
Citations
2
Access
Open access

Abstract

Batch training of machine learning models based on neural networks is now well established, whereas to date streaming methods are largely based on linear models. To go beyond linear in the online setting, nonparametric methods are of interest due to their universality and ability to stably incorporate new information via convexity or Bayes' Rule. Unfortunately, when used online, nonparametric methods suffer a "curse of dimensionality" which precludes their use: their complexity scales at least with the time index. We survey online compression tools which bring their memory under control and attain approximate convergence. The asymptotic bias depends on a compression parameter that trades off memory and accuracy. Further, the applications to robotics, communications, economics, and power are discussed, as well as extensions to multi-agent systems.

Keywords

Nonparametric statisticsCurse of dimensionalityComputer scienceArtificial intelligenceMachine learningConvexityUniversality (dynamical systems)Bayes' theoremBayesian probabilityEconometrics

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