On the separation of correlation-assisted sum capacities of multiple access channels
Akshay Seshadri, Felix Leditzky, Vikesh Siddhu, Graeme Smith

TL;DR
This paper investigates the sum capacity of multiple access channels, especially those derived from nonlocal games, providing bounds, algorithms for non-convex optimization, and efficient computation methods with improved precision.
Contribution
It introduces bounds on sum capacities based on correlations, analyzes non-convex optimization algorithms, and presents a quasi-polynomial time method for computing sum capacities of two-sender MACs.
Findings
Upper bounds on sum capacity depend on sender correlations.
Constructed nonlocal game shows bounds can be arbitrarily loose.
Efficient algorithms compute sum capacity with higher precision.
Abstract
The capacity of a channel characterizes the maximum rate at which information can be transmitted through the channel asymptotically faithfully. For a channel with multiple senders and a single receiver, computing its sum capacity is possible in theory, but challenging in practice because of the nonconvex optimization involved. To address this challenge, we investigate three topics in our study. In the first part, we study the sum capacity of a family of multiple access channels (MACs) obtained from nonlocal games. For any MAC in this family, we obtain an upper bound on the sum rate that depends only on the properties of the game when allowing assistance from an arbitrary set of correlations between the senders. This approach can be used to prove separations between sum capacities when the senders are allowed to share different sets of correlations, such as classical, quantum or…
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Taxonomy
TopicsBlind Source Separation Techniques · Advanced Wireless Communication Techniques · Mathematical Analysis and Transform Methods
