An information theoretic approach to generalised blockmodelling for the identification of meso-scale structure in networks.

ASONAM '16: Advances in Social Networks Analysis and Mining 2016 Davis California August, 2016(2016)

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摘要
Blockmodelling is a technique whose aim is to identify meaningful structure in networks. Community finding is a type of blockmodelling in so far as it focuses on identifying dense subgraph structure. Generalised blockmodelling allows an analyst to explicitly control the type of extracted structure. When compared to the well studied community-finding problem, generalised blockmodelling algorithms lag well behind in terms of their scalability. In this paper we formulate and evaluate a generalised blockmodelling algorithm, based on the Infomap information-theoretic community-finding algorithm. We reformulate the optimisation objective of the Infomap algorithm, so that it is extended to identify specific types of meso-scale structure that are given as input by the analyst. We evaluate our method against other generalised blockmodelling algorithms.
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关键词
information theory,generalised blockmodelling,meso-scale structure,dense subgraph structure,Infomap,community-finding algorithm
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