An Optimal Sauer Lemma Over $k$-ary Alphabets
Steve Hanneke, Qinglin Meng, Shay Moran, and Amirreza Shaeiri

TL;DR
This paper establishes a sharp, optimal Sauer inequality for multiclass and list prediction, improving bounds related to VC-like dimensions over $k$-ary alphabets using the polynomial method.
Contribution
It introduces a tight Sauer inequality based on the Daniely--Shalev-Shwartz dimension, replacing exponential dependence with polynomial, and enhances sample complexity bounds for multiclass learning.
Findings
Bound is tight for all alphabet sizes, list sizes, and dimensions.
Replaces exponential dependence on list size with polynomial dependence.
Improves sample complexity bounds for list PAC learning.
Abstract
The Sauer-Shelah-Perles Lemma is a cornerstone of combinatorics and learning theory, bounding the size of a binary hypothesis class in terms of its Vapnik-Chervonenkis (VC) dimension. For classes of functions over a -ary alphabet, namely the multiclass setting, the Natarajan dimension has long served as an analogue of VC dimension, yet the corresponding Sauer-type bounds are suboptimal for alphabet sizes . In this work, we establish a sharp Sauer inequality for multiclass and list prediction. Our bound is expressed in terms of the Daniely--Shalev-Shwartz (DS) dimension, and more generally with its extension, the list-DS dimension -- the combinatorial parameters that characterize multiclass and list PAC learnability. Our bound is tight for every alphabet size , list size , and dimension value, replacing the exponential dependence on in the Natarajan-based bound…
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