Nearest Neighbor search in Complex Network for Community Detection
Suman Saha, S.P. Ghrera

TL;DR
This paper introduces a novel approach to nearest neighbor search in complex networks by developing a new notion of nearness, and applies it to community detection, achieving competitive results with reduced computation time.
Contribution
It proposes a new metric space and algorithms for approximate and exact nearest neighbor search in complex networks, enhancing community detection efficiency.
Findings
Competitive accuracy with existing algorithms
Reduced computation time
Effective in real network datasets
Abstract
Nearest neighbor search is a basic computational tool used extensively in almost research domains of computer science specially when dealing with large amount of data. However, the use of nearest neighbor search is restricted for the purpose of algorithmic development by the existence of the notion of nearness among the data points. The recent trend of research is on large, complex networks and their structural analysis, where nodes represent entities and edges represent any kind of relation between entities. Community detection in complex network is an important problem of much interest. In general, a community detection algorithm represents an objective function and captures the communities by optimizing it to extract the interesting communities for the user. In this article, we have studied the nearest neighbor search problem in complex network via the development of a suitable…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Clustering Algorithms Research · Text and Document Classification Technologies
