Quantum channel coding: Approximation algorithms and strong converse exponents
Abstract
We study relaxations of entanglement-assisted quantum channel coding and establish that non-signaling assistance and a natural semi-definite programming relaxation\, -- \,termed meta-converse\, -- \,are equivalent in terms of success probabilities. We then present a rounding procedure that transforms any non-signaling-assisted strategy into an entanglement-assisted one and prove an approximation ratio of in success probabilities for the special case of measurement channels. For fully quantum channels, we give a weaker (dimension dependent) approximation ratio, that is nevertheless still tight to characterize the strong converse exponent of entanglement-assisted channel coding [Li and Yao, IEEE Tran.~Inf.~Theory (2024)]. Our derivations leverage ideas from position-based coding, quantum decoupling theorems, the matrix Chernoff inequality, and input flattening techniques.
Cite
@article{arxiv.2410.21124,
title = {Quantum channel coding: Approximation algorithms and strong converse exponents},
author = {Aadil Oufkir and Mario Berta},
journal= {arXiv preprint arXiv:2410.21124},
year = {2025}
}
Comments
28+8 pages, 1 Figure