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Quantum Search on Bounded-Error Inputs

Quantum Physics 2017-01-03 v2 Computational Complexity

Abstract

Suppose we have n algorithms, quantum or classical, each computing some bit-value with bounded error probability. We describe a quantum algorithm that uses O(sqrt{n}) repetitions of the base algorithms and with high probability finds the index of a 1-bit among these n bits (if there is such an index). This shows that it is not necessary to first significantly reduce the error probability in the base algorithms to O(1/poly(n)) (which would require O(sqrt{n}log n) repetitions in total). Our technique is a recursive interleaving of amplitude amplification and error-reduction, and may be of more general interest. Essentially, it shows that quantum amplitude amplification can be made to work also with a bounded-error verifier. As a corollary we obtain optimal quantum upper bounds of O(sqrt{N}) queries for all constant-depth AND-OR trees on N variables, improving upon earlier upper bounds of O(sqrt{N}polylog(N)).

Keywords

Cite

@article{arxiv.quant-ph/0304052,
  title  = {Quantum Search on Bounded-Error Inputs},
  author = {Peter Hoyer and Michele Mosca and Ronald de Wolf},
  journal= {arXiv preprint arXiv:quant-ph/0304052},
  year   = {2017}
}

Comments

9 pages Latex. To appear in Proceedings of ICALP 03. 2nd version: corrected affiliation of 2nd author (no other changes)