Coded Downlink Massive Random Access and a Finite de Finetti Theorem
Ryan Song, Kareem M. Attiah, and Wei Yu

TL;DR
This paper introduces coding techniques for massive downlink random access that significantly reduce overhead by exploiting symmetry in source distributions, and establishes a new finite de Finetti theorem related to exchangeable sequences.
Contribution
It develops novel coding strategies that eliminate overhead dependency on user pool size for symmetric sources and presents a new finite de Finetti theorem with optimal scaling.
Findings
Overhead reduced to O(log(k)) for exchangeable sources
Overhead reduced to O(1) for uniform i.i.d. sources
Established a new finite de Finetti theorem with optimal scaling
Abstract
This paper considers a massive connectivity setting in which a base-station (BS) aims to communicate sources to a randomly activated subset of users, among a large pool of users, via a common message in the downlink. Although the identities of the active users are assumed to be known at the BS, each active user only knows whether itself is active and does not know the identities of the other active users. A naive coding strategy is to transmit the sources alongside the identities of the users for which the source information is intended. This requires bits, because the cost of specifying the identity of one out of users is bits. For large , this overhead can be significant. This paper shows that it is possible to develop coding techniques that eliminate the dependency of the overhead on , if the source…
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Taxonomy
TopicsWireless Body Area Networks · Advanced MIMO Systems Optimization · Cooperative Communication and Network Coding
