Quantum Amplitude Amplification and Estimation
Gilles Brassard (1), Peter Hoyer (2), Michele Mosca (3), Alain Tapp, (3) ((1) DIRO Universite de Montreal, (2) BRICS University of Aarhus, (3), CACR University of Waterloo)

TL;DR
This paper introduces quantum amplitude amplification and estimation techniques that significantly improve the efficiency of quantum search and counting algorithms, generalizing Grover's algorithm and combining ideas from Shor's algorithm.
Contribution
The paper presents a novel quantum amplitude estimation method that works without prior knowledge of the success probability and achieves optimal quadratic speedup for search and counting problems.
Findings
Amplitude amplification reduces search complexity from 1/a to 1/√a.
Amplitude estimation enables accurate probability estimation without prior knowledge.
The algorithms are optimal in various problem settings.
Abstract
Consider a Boolean function that partitions set between its good and bad elements, where is good if and bad otherwise. Consider also a quantum algorithm such that is a quantum superposition of the elements of , and let denote the probability that a good element is produced if is measured. If we repeat the process of running , measuring the output, and using to check the validity of the result, we shall expect to repeat times on the average before a solution is found. *Amplitude amplification* is a process that allows to find a good after an expected number of applications of and its inverse which is proportional to , assuming algorithm makes no measurements. This is a generalization of Grover's searching algorithm in which…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Computability, Logic, AI Algorithms
