Quantum compression of tensor network states

Author:

Bai GeORCID,Yang YuxiangORCID,Chiribella GiulioORCID

Abstract

Abstract We design quantum compression algorithms for parametric families of tensor network states. We first establish an upper bound on the amount of memory needed to store an arbitrary state from a given state family. The bound is determined by the minimum cut of a suitable flow network, and is related to the flow of information from the manifold of parameters that specify the states to the physical systems in which the states are embodied. For given network topology and given edge dimensions, our upper bound is tight when all edge dimensions are powers of the same integer. When this condition is not met, the bound is optimal up to a multiplicative factor smaller than 1.585. We then provide a compression algorithm for general state families, and show that the algorithm runs in polynomial time for matrix product states.

Funder

Croucher Foundation

ETH Pauli Center for Theoretical Studies

John Templeton Foundation

HKU Seed Funding for Basic Research

Schweizerischer Nationalfonds zur Förderung der Wissenschaftlichen Forschung

National Natural Science Foundation of China

Foundational Questions Institute

Hong Kong Research Grant Council

Publisher

IOP Publishing

Subject

General Physics and Astronomy

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