English

Quantum DNF Learnability Revisited

Quantum Physics 2011-10-11 v1

Abstract

We describe a quantum PAC learning algorithm for DNF formulae under the uniform distribution with a query complexity of O~(s3/ϵ+s2/ϵ2)\tilde{O}(s^{3}/\epsilon + s^{2}/\epsilon^{2}), where ss is the size of DNF formula and ϵ\epsilon is the PAC error accuracy. If ss and 1/ϵ1/\epsilon are comparable, this gives a modest improvement over a previously known classical query complexity of O~(ns2/ϵ2)\tilde{O}(ns^{2}/\epsilon^{2}). We also show a lower bound of Ω(slogn/n)\Omega(s\log n/n) on the query complexity of any quantum PAC algorithm for learning a DNF of size ss with nn inputs under the uniform distribution.

Keywords

Cite

@article{arxiv.quant-ph/0202066,
  title  = {Quantum DNF Learnability Revisited},
  author = {Jeffrey C. Jackson and Christino Tamon and Tomoyuki Yamakami},
  journal= {arXiv preprint arXiv:quant-ph/0202066},
  year   = {2011}
}