English

Distribution-free Junta Testing

Computational Complexity 2018-02-15 v1

Abstract

We study the problem of testing whether an unknown nn-variable Boolean function is a kk-junta in the distribution-free property testing model, where the distance between functions is measured with respect to an arbitrary and unknown probability distribution over {0,1}n\{0,1\}^n. Our first main result is that distribution-free kk-junta testing can be performed, with one-sided error, by an adaptive algorithm that uses O~(k2)/ϵ\tilde{O}(k^2)/\epsilon queries (independent of nn). Complementing this, our second main result is a lower bound showing that any non-adaptive distribution-free kk-junta testing algorithm must make Ω(2k/3)\Omega(2^{k/3}) queries even to test to accuracy ϵ=1/3\epsilon=1/3. These bounds establish that while the optimal query complexity of non-adaptive kk-junta testing is 2Θ(k)2^{\Theta(k)}, for adaptive testing it is poly(k)\text{poly}(k), and thus show that adaptivity provides an exponential improvement in the distribution-free query complexity of testing juntas.

Keywords

Cite

@article{arxiv.1802.04859,
  title  = {Distribution-free Junta Testing},
  author = {Xi Chen and Zhengyang Liu and Rocco A. Servedio and Ying Sheng and Jinyu Xie},
  journal= {arXiv preprint arXiv:1802.04859},
  year   = {2018}
}