Explorerβ€ΊData Scienceβ€ΊMachine Learning
Research PaperResearchia:202604.16069

An Optimal Sauer Lemma Over $k$-ary Alphabets

Steve Hanneke

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 $k$-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 $k>2$. In this work, we establish a sharp Sauer inequality for multiclass and list pred...

Submitted: April 16, 2026Subjects: Machine Learning; Data Science

Description / Details

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 kk-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 k>2k>2. 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 kk, list size β„“\ell, and dimension value, replacing the exponential dependence on β„“\ell in the Natarajan-based bound by the optimal polynomial dependence, and improving the dependence on kk as well. Our proof uses the polynomial method. In contrast to the classical VC case, where several direct combinatorial proofs are known, we are not aware of any purely combinatorial proof in the DS setting. This motivates several directions for future research, which are discussed in the paper. As consequences, we obtain improved sample complexity upper bounds for list PAC learning and for uniform convergence of list predictors, sharpening the recent results of Charikar et al.(STOC2023), Hanneke et al.(COLT2024), and Brukhim et al.(NeurIPS2024).


Source: arXiv:2604.12952v1 - http://arxiv.org/abs/2604.12952v1 PDF: https://arxiv.org/pdf/2604.12952v1 Original Link: http://arxiv.org/abs/2604.12952v1

Please sign in to join the discussion.

No comments yet. Be the first to share your thoughts!

Access Paper
View Source PDF
Submission Info
Date:
Apr 16, 2026
Topic:
Data Science
Area:
Machine Learning
Comments:
0
Bookmark