Piece-wise quadratic approximations of arbitrary error functions for fast and robust machine learning
A.N. Gorban, E.M. Mirkes, A. Zinovyev

TL;DR
This paper introduces a universal, efficient framework for optimizing arbitrary sub-quadratic error functionals in machine learning, significantly improving computational speed and robustness over traditional quadratic approaches.
Contribution
It develops a novel theory and algorithms for minimizing arbitrary sub-quadratic error potentials using piece-wise quadratic approximations, applicable to various machine learning methods.
Findings
Achieves orders of magnitude faster computation on synthetic datasets.
Maintains or improves accuracy compared to state-of-the-art methods.
Provides a flexible framework for robust data approximation and regression.
Abstract
Most of machine learning approaches have stemmed from the application of minimizing the mean squared distance principle, based on the computationally efficient quadratic optimization methods. However, when faced with high-dimensional and noisy data, the quadratic error functionals demonstrated many weaknesses including high sensitivity to contaminating factors and dimensionality curse. Therefore, a lot of recent applications in machine learning exploited properties of non-quadratic error functionals based on norm or even sub-linear potentials corresponding to quasinorms (). The back side of these approaches is increase in computational cost for optimization. Till so far, no approaches have been suggested to deal with {\it arbitrary} error functionals, in a flexible and computationally efficient framework. In this paper, we develop a theory and basic universal data…
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