Sign Rank Versus VC Dimension

Abstract

This work studies the maximum possible sign rank of $N \times N$ sign matrices with a given VC dimension $d$. For $d=1$, this maximum is three. For $d=2$, this maximum is $\tilde{\Theta}(N^{1/2})$. For $d >2$, similar but slightly less accurate statements hold. The lower bounds improve over previous ones by Ben-David et al., and the upper bounds are novel. The lower bounds are obtained by probabilistic constructions, using a theorem of Warren in real algebraic topology. The upper bounds are obtained using a result of Welzl about spanning trees with low stabbing number, and using the moment curve. The upper bound technique is also used to: (i) provide estimates on the number of classes of a given VC dimension, and the number of maximum classes of a given VC dimension -- answering a question of Frankl from '89, and (ii) design an efficient algorithm that provides an $O(N/\log(N))$ multiplicative approximation for the sign rank. We also observe a general connection between sign rank and spectral gaps which is based on Forster's argument. Consider the $N \times N$ adjacency matrix of a $\Delta$ regular graph with a second eigenvalue of absolute value $\lambda$ and $\Delta \leq N/2$. We show that the sign rank of the signed version of this matrix is at least $\Delta/\lambda$. We use this connection to prove the existence of a maximum class $C\subseteq\{\pm 1\}^N$ with VC dimension $2$ and sign rank $\tilde{\Theta}(N^{1/2})$. This answers a question of Ben-David et al.~regarding the sign rank of large VC classes. We also describe limitations of this approach, in the spirit of the Alon-Boppana theorem. We further describe connections to communication complexity, geometry, learning theory, and combinatorics.

Cite

Text

Alon et al. "Sign Rank Versus VC Dimension." Annual Conference on Computational Learning Theory, 2016.

Markdown

[Alon et al. "Sign Rank Versus VC Dimension." Annual Conference on Computational Learning Theory, 2016.](https://mlanthology.org/colt/2016/alon2016colt-sign/)

BibTeX

@inproceedings{alon2016colt-sign,
  title     = {{Sign Rank Versus VC Dimension}},
  author    = {Alon, Noga and Moran, Shay and Yehudayoff, Amir},
  booktitle = {Annual Conference on Computational Learning Theory},
  year      = {2016},
  pages     = {47-80},
  url       = {https://mlanthology.org/colt/2016/alon2016colt-sign/}
}