@inproceedings{68cde4ceefbe472ab4e86591aecb4ba3,
title = "On the structure of boolean functions with small spectral norm",
abstract = "In this paper we prove results regarding Boolean functions with small spectral norm (the spectral norm of f is ||{\^f}||1 = Σ α |{\^f}(α)|). Specifically, we prove the following results for functions f: {0, 1}n → {0,1} with ||{\^f}||1 = A. 1. There is a subspace V of co-dimension at most A2 such that f\V is constant. 2. f can be computed by a parity decision tree of size 2 A2n2A. (a parity decision tree is a decision tree whose nodes are labeled with arbitrary linear functions.) 3. f can be computed by a De Morgan formula of size O(2A2n2A+2) and by a De Morgan formula of depth O(A2 + log(n) · A). 4. If in addition f has at most s nonzero Fourier coefficients, then f can be computed by a parity decision tree of depth A2 log s. 5. For every ε > 0 there is a parity decision tree of depth O(A2 + log(1/ε)) and size 2 O(A2) · min{1/ε2, O(log(1/ε)) 2A} that e-approximates f. Furthermore, this tree can be learned, with probability 1 - δ, using poly(n, exp(A2), 1/ε, log(1/δ)) membership queries. All the results above (except 3) also hold (with a slight change in parameters) for functions f: ℤp n → {0,1}.",
keywords = "Analysis of Boolean Functions, Decision Trees, Spectral Norm",
author = "Amir Shpilka and Avishay Tal and Volk, {Ben Lee}",
year = "2014",
doi = "10.1145/2554797.2554803",
language = "الإنجليزيّة",
isbn = "9781450322430",
series = "ITCS 2014 - Proceedings of the 2014 Conference on Innovations in Theoretical Computer Science",
publisher = "Association for Computing Machinery",
pages = "37--47",
booktitle = "ITCS 2014 - Proceedings of the 2014 Conference on Innovations in Theoretical Computer Science",
address = "الولايات المتّحدة",
note = "2014 5th Conference on Innovations in Theoretical Computer Science, ITCS 2014 ; Conference date: 12-01-2014 Through 14-01-2014",
}