Dynamic Conjectures in Random Access Networks Using Bio-inspired Learning
Yi Su, Mihaela van der Schaar

TL;DR
This paper introduces a bio-inspired, conjecture-based distributed learning approach for autonomous nodes in random access networks, enabling improved throughput, fairness, and stability over traditional protocols.
Contribution
It proposes a novel conjecture-based learning framework inspired by biological phenomena, with mechanisms for convergence and stability analysis in random access networks.
Findings
Significantly outperforms IEEE 802.11 DCF in throughput and fairness.
Ensures convergence and stability of the proposed learning algorithms.
Achieves stable conjectural equilibria across the throughput region.
Abstract
This paper considers a conjecture-based distributed learning approach that enables autonomous nodes to independently optimize their transmission probabilities in random access networks. We model the interaction among multiple self-interested nodes as a game. It is well-known that the Nash equilibria in this game result in zero throughput for all the nodes if they take myopic best-response, thereby leading to a network collapse. This paper enables nodes to behave as intelligent entities which can proactively gather information, form internal conjectures on how their competitors would react to their actions, and update their beliefs according to their local observations. In this way, nodes are capable to autonomously "learn" the behavior of their competitors, optimize their own actions, and eventually cultivate reciprocity in the random access network. To characterize the steady-state…
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Taxonomy
TopicsCooperative Communication and Network Coding · Advanced MIMO Systems Optimization · Wireless Communication Security Techniques
