Learning Weakly Convex Sets in Metric Spaces
Eike Stadtl\"ander, Tam\'as Horv\'ath, Stefan Wrobel

TL;DR
This paper introduces a general polynomial-time algorithm for efficiently finding consistent weakly convex hypotheses in metric spaces, expanding the understanding of learnability beyond convex hypotheses and addressing non-convex, disconnected regions.
Contribution
It develops a domain-independent algorithm for weakly convex hypotheses, providing sufficient conditions for efficiency and extending to extensional weakly convex hypotheses in graph vertex classification.
Findings
Polynomial-time algorithm for weakly convex hypotheses
Efficient learning for non-convex hypothesis classes
Extension to graph vertex classification
Abstract
One of the central problems studied in the theory of machine learning is the question of whether, for a given class of hypotheses, it is possible to efficiently find a {consistent} hypothesis, i.e., which has zero training error. While problems involving {\em convex} hypotheses have been extensively studied, the question of whether efficient learning is possible for non-convex hypotheses composed of possibly several disconnected regions is still less understood. Although it has been shown quite a while ago that efficient learning of weakly convex hypotheses, a parameterized relaxation of convex hypotheses, is possible for the special case of Boolean functions, the question of whether this idea can be developed into a generic paradigm has not been studied yet. In this paper, we provide a positive answer and show that the consistent hypothesis finding problem can indeed be solved in…
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