Generalised rational approximation and its application to improve deep learning classifiers

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摘要

A rational approximation (that is, approximation by a ratio of two polynomials) is a flexible alternative to polynomial approximation. In particular, rational functions exhibit accurate estimations to nonsmooth and non-Lipschitz functions, where polynomial approximations are not efficient. We prove that the optimisation problems appearing in the best uniform rational approximation and its generalisation to a ratio of linear combinations of basis functions are quasiconvex even when the basis functions are not restricted to monomials. Then we show how this fact can be used in the development of computational methods. This paper presents a theoretical study of the arising optimisation problems and provides results of several numerical experiments. We apply our approximation as a preprocessing step to deep learning classifiers and demonstrate that the classification accuracy is significantly improved compared to the classification of the raw signals.

论文关键词:Rational approximation,Generalised rational approximation,Quasiconvex functions,Chebyshev approximation,Data analysis,Deep learning

论文评审过程:Received 27 February 2020, Revised 31 May 2020, Accepted 19 July 2020, Available online 10 August 2020, Version of Record 10 August 2020.

论文官网地址:https://doi.org/10.1016/j.amc.2020.125560