Dual VC Dimension Obstructs Sample Compression by Embeddings
Zachary Chase, Bogdan Chornomaz, Steve Hanneke, Shay Moran, and Amir Yehudayoff

TL;DR
This paper demonstrates that embedding arbitrary VC classes into extremal classes significantly increases dimension, revealing fundamental limitations in sample compression approaches and establishing new bounds on dual VC dimensions.
Contribution
It proves that embedding VC classes into extremal classes requires exponential dimension increase and establishes a new upper bound on the dual VC dimension of extremal classes.
Findings
Embedding VC classes into extremal classes requires exponential dimension increase.
Any extremal class with VC dimension d has dual VC dimension at most 2d+1.
This bound is exponentially smaller than the classical Assouad bound.
Abstract
This work studies embedding of arbitrary VC classes in well-behaved VC classes, focusing particularly on extremal classes. Our main result expresses an impossibility: such embeddings necessarily require a significant increase in dimension. In particular, we prove that for every there is a class with VC dimension that cannot be embedded in any extremal class of VC dimension smaller than exponential in . In addition to its independent interest, this result has an important implication in learning theory, as it reveals a fundamental limitation of one of the most extensively studied approaches to tackling the long-standing sample compression conjecture. Concretely, the approach proposed by Floyd and Warmuth entails embedding any given VC class into an extremal class of a comparable dimension, and then applying an optimal sample compression scheme for extremal classes. However,…
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Taxonomy
TopicsAlgorithms and Data Compression · Advanced Data Compression Techniques
