Exponential separations between learning with and without quantum memory
Sitan Chen, Jordan Cotler, Hsin-Yuan Huang, Jerry Li

TL;DR
This paper demonstrates exponential advantages of quantum memory in learning quantum system properties, showing that algorithms with quantum memory require significantly fewer samples than those without, across various tasks.
Contribution
It establishes fundamental exponential separations in sample complexity between algorithms with and without quantum memory for multiple quantum learning problems.
Findings
Algorithms with quantum memory outperform classical ones in shadow tomography.
Exponential sample complexity separations for purity testing and evolution discrimination.
Tradeoff between quantum memory size and sample complexity for Pauli observable estimation.
Abstract
We study the power of quantum memory for learning properties of quantum systems and dynamics, which is of great importance in physics and chemistry. Many state-of-the-art learning algorithms require access to an additional external quantum memory. While such a quantum memory is not required a priori, in many cases, algorithms that do not utilize quantum memory require much more data than those which do. We show that this trade-off is inherent in a wide range of learning problems. Our results include the following: (1) We show that to perform shadow tomography on an -qubit state rho with observables, any algorithm without quantum memory requires samples of rho in the worst case. Up to logarithmic factors, this matches the upper bound of [HKP20] and completely resolves an open question in [Aar18, AR19]. (2) We establish exponential separations between…
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Videos
Exponential Separations Between Learning With and Without Quantum Memory· youtube
Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Machine Learning and Algorithms · Computability, Logic, AI Algorithms
