
TL;DR
This paper introduces a novel information-theoretic framework for community detection in networks, using coding theory concepts to develop algorithms and establish fundamental noise tolerance limits.
Contribution
It applies coding theory methods to community detection, creating quasi-optimal algorithms and defining a decodability bound based on Shannon's theorem.
Findings
Decodability bound accurately predicts algorithm performance.
State-of-the-art decoding techniques yield near-optimal community detection.
The approach links community detection performance to fundamental information limits.
Abstract
According to a recent information-theoretical proposal, the problem of defining and identifying communities in networks can be interpreted as a classical communication task over a noisy channel: memberships of nodes are information bits erased by the channel, edges and non-edges in the network are parity bits introduced by the encoder but degraded through the channel, and a community identification algorithm is a decoder. The interpretation is perfectly equivalent to the one at the basis of well-known statistical inference algorithms for community detection. The only difference in the interpretation is that a noisy channel replaces a stochastic network model. However, the different perspective gives the opportunity to take advantage of the rich set of tools of coding theory to generate novel insights on the problem of community detection. In this paper, we illustrate two main…
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