Sample compression schemes for balls in graphs
J\'er\'emie Chalopin, Victor Chepoi, Fionn Mc Inerney, S\'ebastien, Ratel, Yann Vax\`es

TL;DR
This paper investigates sample compression schemes for balls in various classes of graphs, providing explicit scheme sizes and constructions for different graph types and radii, advancing understanding of VC-dimension related problems.
Contribution
It introduces new sample compression schemes of small size for balls in specific graph classes, including trees, cycles, interval graphs, and hyperbolic graphs, addressing open problems in VC-dimension theory.
Findings
Proper compression schemes of size 2 for trees
Proper compression schemes of size 3 for cycles
Approximate schemes for hyperbolic graphs
Abstract
One of the open problems in machine learning is whether any set-family of VC-dimension admits a sample compression scheme of size . In this paper, we study this problem for balls in graphs. For a ball of a graph , a realizable sample for is a signed subset of such that contains and is disjoint from . A proper sample compression scheme of size consists of a compressor and a reconstructor. The compressor maps any realizable sample to a subsample of size at most . The reconstructor maps each such subsample to a ball of such that includes and is disjoint from . For balls of arbitrary radius , we design proper labeled sample compression schemes of size for trees, of size for cycles, of size for interval graphs, of size for trees of cycles, and of size for…
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