Oracle problems as communication tasks and optimization of quantum algorithms
Amit Te'eni, Zohar Schwartzman-Nowik, Marcin Nowakowski, Pawe{\l} Horodecki, Eliahu Cohen

TL;DR
This paper models oracle problems as quantum communication tasks, optimizing mutual information to improve quantum algorithms' efficiency and establishing bounds on their performance.
Contribution
It introduces a novel framework linking oracle problems with quantum communication, providing bounds and optimal algorithms for fixed-query scenarios.
Findings
Optimal measurement bases minimize quantum correlations.
Lower bounds on mutual information relate to quantum coherence.
Framework applies to multiple-query algorithms and known cases.
Abstract
Quantum query complexity studies the number of queries needed to learn some property of a black box. A closely related question is how well an algorithm can succeed with this learning task using only a fixed number of queries. In this work, we propose measuring an algorithm's performance using the mutual information between the output and the actual value. The task of optimizing this mutual information using a single query, is similar to a basic task of quantum communication, where one attempts to maximize the mutual information of the sender and receiver. We make this analogy precise by splitting the algorithm between two agents, obtaining a communication protocol. The oracle's target property plays the role of a message that Alice encodes into a quantum state, which is subsequently sent over to Bob. The first part of the algorithm performs this encoding, and the second part measures…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture
