Sample compression schemes for balls in graphs

Abstract

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=Br(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 δ-hyperbolic graphs.

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