Random Separating Hyperplane Theorem and Learning Polytopes
Chiranjib Bhattacharyya, Ravindran Kannan, Amit Kumar

TL;DR
This paper introduces the Random Separating Hyperplane Theorem (RSH), strengthening classical results for polytopes, and applies it to develop the first provable algorithms for learning and approximating polytopes and their vertices using optimization oracles.
Contribution
The paper presents the RSH theorem and demonstrates its use in creating efficient algorithms for learning polytopes and approximating their vertices from optimization oracles.
Findings
RSH provides a probabilistic separation guarantee for polytopes.
First provable algorithm for learning polytopes within Hausdorff distance using optimization queries.
Efficient vertex approximation algorithms under well-separatedness assumptions.
Abstract
The Separating Hyperplane theorem is a fundamental result in Convex Geometry with myriad applications. Our first result, Random Separating Hyperplane Theorem (RSH), is a strengthening of this for polytopes. asserts that if the distance between and a polytope with vertices and unit diameter in is at least , where is a fixed constant in , then a randomly chosen hyperplane separates and with probability at least and margin at least . An immediate consequence of our result is the first near optimal bound on the error increase in the reduction from a Separation oracle to an Optimization oracle over a polytope. RSH has algorithmic applications in learning polytopes. We consider a fundamental problem, denoted the ``Hausdorff problem'', of learning a unit diameter polytope within…
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Taxonomy
MethodsLinear Discriminant Analysis
