Helly-Type Theorems in Property Testing
Sourav Chakraborty, Rameshwar Pratap, Sasanka Roy, and Shubhangi Saraf

TL;DR
This paper introduces a property testing algorithm for convex clustering based on Helly's theorem, enabling efficient detection of clusterability in large point sets with minimal sampling.
Contribution
It develops a novel testing method for $(k,G)$-clusterability using small samples, extending Helly's theorem to clustering verification.
Findings
Effective testing algorithm for $k=1$ and symmetric convex $G$
Weak solution for $k>1$ clusterability testing
Application to clustering with outliers using constant samples
Abstract
Helly's theorem is a fundamental result in discrete geometry, describing the ways in which convex sets intersect with each other. If is a set of points in , we say that is -clusterable if it can be partitioned into clusters (subsets) such that each cluster can be contained in a translated copy of a geometric object . In this paper, as an application of Helly's theorem, by taking a constant size sample from , we present a testing algorithm for -clustering, i.e., to distinguish between two cases: when is -clusterable, and when it is -far from being -clusterable. A set is -far from being -clusterable if at least points need to be removed from to make it -clusterable. We solve this problem for and when is a symmetric convex object. For , we…
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