Sifting out communities in large sparse networks
Sharlee Climer, Kenneth Smith Jr, Wei Yang, Lisa de las Fuentes,, Victor G. D\'avila-Rom\'an, and C. Charles Gu

TL;DR
This paper presents a new method for detecting communities in large, sparse networks that improves accuracy over traditional methods, especially in noisy data, and is applicable to real-world large-scale networks.
Contribution
It introduces a novel objective function and a two-step clustering approach tailored for large sparse networks, enhancing community detection accuracy.
Findings
Higher accuracy than modularity-based methods in simulated networks
Effective in noisy and large-scale real-world networks
Demonstrates practical utility in genetic interaction networks
Abstract
Research data sets are growing to unprecedented sizes and network modeling is commonly used to extract complex relationships in diverse domains, such as genetic interactions involved in disease, logistics, and social communities. As the number of nodes increases in a network, an increasing sparsity of edges is a practical limitation due to memory restrictions. Moreover, many of these sparse networks exhibit very large numbers of nodes with no adjacent edges, as well as disjoint components of nodes with no edges connecting them. A prevalent aim in network modeling is the identification of clusters, or communities, of nodes that are highly interrelated. Several definitions of strong community structure have been introduced to facilitate this task, each with inherent assumptions and biases. We introduce an intuitive objective function for quantifying the quality of clustering results in…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opportunistic and Delay-Tolerant Networks
