Uncovering and Testing the Fuzzy Clusters Based on Lumped Markov Chain in Complex Network
Author(s) -
Jing Fan,
Xie Jianbin,
Jinlong Wang,
Jinshuai Qu
Publication year - 2013
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0082964
Subject(s) - markov chain , computer science , markov process , partition (number theory) , fuzzy logic , variable order markov model , stochastic matrix , markov model , node (physics) , algorithm , partition function (quantum field theory) , theoretical computer science , artificial intelligence , machine learning , mathematics , physics , statistics , combinatorics , quantum mechanics
Identifying clusters, namely groups of nodes with comparatively strong internal connectivity, is a fundamental task for deeply understanding the structure and function of a network. By means of a lumped Markov chain model of a random walker, we propose two novel ways of inferring the lumped markov transition matrix. Furthermore, some useful results are proposed based on the analysis of the properties of the lumped Markov process. To find the best partition of complex networks, a novel framework including two algorithms for network partition based on the optimal lumped Markovian dynamics is derived to solve this problem. The algorithms are constructed to minimize the objective function under this framework. It is demonstrated by the simulation experiments that our algorithms can efficiently determine the probabilities with which a node belongs to different clusters during the learning process and naturally supports the fuzzy partition. Moreover, they are successfully applied to real-world network, including the social interactions between members of a karate club.
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