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arxiv: 2206.13254 · v2 · pith:JMO4NUN2 · submitted 2022-06-27 · cs.DM · cs.LG

Sample compression schemes for balls in graphs

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classification cs.DM cs.LG
keywords sizesamplecompressiongraphsballsschemesdesignproper
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One of the open problems in machine learning is whether any set-family of VC-dimension $d$ admits a sample compression scheme of size $O(d)$. In this paper, we study this problem for balls in graphs. For a ball $B=B_r(x)$ of a graph $G=(V,E)$, a realizable sample for $B$ is a signed subset $X=(X^+,X^-)$ of $V$ such that $B$ contains $X^+$ and is disjoint from $X^-$. A proper sample compression scheme of size $k$ consists of a compressor and a reconstructor. The compressor maps any realizable sample $X$ to a subsample $X'$ of size at most $k$. The reconstructor maps each such subsample $X'$ to a ball $B'$ of $G$ such that $B'$ includes $X^+$ and is disjoint from $X^-$. For balls of arbitrary radius $r$, we design proper labeled sample compression schemes of size $2$ for trees, of size $3$ for cycles, of size $4$ for interval graphs, of size $6$ for trees of cycles, and of size $22$ for cube-free median graphs. For balls of a given radius, we design proper labeled sample compression schemes of size $2$ for trees and of size $4$ for interval graphs. We also design approximate sample compression schemes of size 2 for balls of $\delta$-hyperbolic graphs.

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  1. Sample compression schemes for balls in structurally sparse graphs

    cs.DM 2026-04 unverdicted novelty 7.0

    Ball hypergraphs on graphs of treewidth t have proper sample compression schemes of size O(t log t), tight up to log factors and improving prior quadratic bounds.