Community Detection via Random and Adaptive Sampling
Se-Young Yun, Alexandre Proutiere

TL;DR
This paper investigates community detection in networks using both non-adaptive and adaptive sampling strategies, deriving fundamental limits and proposing algorithms that achieve optimal accuracy in recovering hidden communities.
Contribution
It introduces a unified framework for community detection with adaptive sampling, providing necessary and sufficient conditions for accurate recovery and extending results to the stochastic block model.
Findings
Derived fundamental performance limits for community detection
Proposed algorithms that achieve optimal recovery under given conditions
Extended analysis to adaptive sampling scenarios in stochastic block models
Abstract
In this paper, we consider networks consisting of a finite number of non-overlapping communities. To extract these communities, the interaction between pairs of nodes may be sampled from a large available data set, which allows a given node pair to be sampled several times. When a node pair is sampled, the observed outcome is a binary random variable, equal to 1 if nodes interact and to 0 otherwise. The outcome is more likely to be positive if nodes belong to the same communities. For a given budget of node pair samples or observations, we wish to jointly design a sampling strategy (the sequence of sampled node pairs) and a clustering algorithm that recover the hidden communities with the highest possible accuracy. We consider both non-adaptive and adaptive sampling strategies, and for both classes of strategies, we derive fundamental performance limits satisfied by any sampling and…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Topological and Geometric Data Analysis
