Evolutionary Games for Correlation-Aware Clustering in Massive Machine-to-Machine Networks
Nicole Sawyer, Mehdi Naderi Soorki, Walid Saad, David B. Smith

TL;DR
This paper introduces a correlation-aware clustering method for dense machine-to-machine networks using evolutionary game theory, reducing redundant data transmission and power consumption.
Contribution
It proposes a novel utility function and a distributed algorithm for autonomous cluster formation, ensuring stability and robustness in large M2M networks.
Findings
Reduces average transmit power by up to 23.4%
Effectively clusters highly correlated MTDs
Ensures stable cluster formation with evolutionary game theory
Abstract
In this paper, the problem of self-organizing, correlation-aware clustering is studied for a dense network of machine-type devices (MTDs) deployed over a cellular network. In dense machine-to-machine networks, MTDs are typically located within close proximity and will gather correlated data, and, thus, clustering MTDs based on data correlation will lead to a decrease in the number of redundant bits transmitted to the base station. To analyze this clustering problem, a novel utility function that captures the average MTD transmission power per cluster is derived, as a function of the MTD location, cluster size, and inter-cluster interference. Then, the clustering problem is formulated as an evolutionary game, which models the interactions among the massive number of MTDs, in order to decrease MTD transmission power. To solve this game, a distributed algorithm is proposed to allow the…
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