Online Epsilon Net and Piercing Set for Geometric Concepts
Sujoy Bhore, Devdan Dey, Satyam Singh

TL;DR
This paper introduces the first online algorithms with optimal or near-optimal competitive ratios for epsilon-net problems in geometric set systems with bounded VC-dimension, advancing theoretical understanding in online geometric sampling.
Contribution
It provides the first deterministic online algorithm for intervals in , a randomized algorithm for axis-aligned boxes in for db1 3, and a new analysis technique for constant complexity objects.
Findings
Deterministic online algorithm for intervals with optimal competitive ratio.
Randomized online algorithm for axis-aligned boxes in for db1 3.
New technique for analyzing similar-sized objects of constant description complexity.
Abstract
VC-dimension and -nets are key concepts in Statistical Learning Theory. Intuitively, VC-dimension is a measure of the size of a class of sets. The famous -net theorem, a fundamental result in Discrete Geometry, asserts that if the VC-dimension of a set system is bounded, then a small sample exists that intersects all sufficiently large sets. In online learning scenarios where data arrives sequentially, the VC-dimension helps to bound the complexity of the set system, and -nets ensure the selection of a small representative set. This sampling framework is crucial in various domains, including spatial data analysis, motion planning in dynamic environments, optimization of sensor networks, and feature extraction in computer vision, among others. Motivated by these applications, we study the online -net problem for geometric concepts…
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Taxonomy
TopicsDigital Games and Media · Artificial Intelligence in Games · Comics and Graphic Narratives
MethodsSparse Evolutionary Training · Focus
