Community Detection with Self-Adapting Switching Based on Affinity

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Abstract

Community structures in complex networks play an important role in researching network function. Although there are various algorithms based on affinity or similarity, their drawbacks are obvious. They perform well in strong communities, but perform poor in weak communities. Experiments show that sometimes, community detection algorithms based on a single affinity do not work well, especially for weak communities. So we design a self-adapting switching (SAS) algorithm, where weak communities are detected by combination of two affinities. Compared with some state-of-the-art algorithms, the algorithm has a competitive accuracy and its time complexity is near linear. Our algorithm also provides a new framework of combination algorithm for community detection. Some extensive computational simulations on both artificial and real-world networks confirm the potential capability of our algorithm.

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Wang, N. N., Jin, Z., & Peng, X. L. (2019). Community Detection with Self-Adapting Switching Based on Affinity. Complexity, 2019. https://doi.org/10.1155/2019/6946189

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