English

Multiple Random Oracles Are Better Than One

Machine Learning 2008-04-25 v1

Abstract

We study the problem of learning k-juntas given access to examples drawn from a number of different product distributions. Thus we wish to learn a function f : {-1,1}^n -> {-1,1} that depends on k (unknown) coordinates. While the best known algorithms for the general problem of learning a k-junta require running time of n^k * poly(n,2^k), we show that given access to k different product distributions with biases separated by \gamma>0, the functions may be learned in time poly(n,2^k,\gamma^{-k}). More generally, given access to t <= k different product distributions, the functions may be learned in time n^{k/t} * poly(n,2^k,\gamma^{-k}). Our techniques involve novel results in Fourier analysis relating Fourier expansions with respect to different biases and a generalization of Russo's formula.

Cite

@article{arxiv.0804.3817,
  title  = {Multiple Random Oracles Are Better Than One},
  author = {Jan Arpe and Elchanan Mossel},
  journal= {arXiv preprint arXiv:0804.3817},
  year   = {2008}
}

Comments

17 pages

R2 v1 2026-06-21T10:34:05.311Z