scholarly journals Community detection on mixture multilayer networks via regularized tensor decomposition

2021 ◽  
Vol 49 (6) ◽  
Author(s):  
Bing-Yi Jing ◽  
Ting Li ◽  
Zhongyuan Lyu ◽  
Dong Xia
Author(s):  
Stefan Thurner ◽  
Rudolf Hanel ◽  
Peter Klimekl

Understanding the interactions between the components of a system is key to understanding it. In complex systems, interactions are usually not uniform, not isotropic and not homogeneous: each interaction can be specific between elements.Networks are a tool for keeping track of who is interacting with whom, at what strength, when, and in what way. Networks are essential for understanding of the co-evolution and phase diagrams of complex systems. Here we provide a self-contained introduction to the field of network science. We introduce ways of representing and handle networks mathematically and introduce the basic vocabulary and definitions. The notions of random- and complex networks are reviewed as well as the notions of small world networks, simple preferentially grown networks, community detection, and generalized multilayer networks.


2017 ◽  
Vol 31 (5) ◽  
pp. 1444-1479 ◽  
Author(s):  
Roberto Interdonato ◽  
Andrea Tagarelli ◽  
Dino Ienco ◽  
Arnaud Sallaberry ◽  
Pascal Poncelet

2017 ◽  
Vol 7 (3) ◽  
Author(s):  
Dane Taylor ◽  
Rajmonda S. Caceres ◽  
Peter J. Mucha

2017 ◽  
Vol 95 (4) ◽  
Author(s):  
Caterina De Bacco ◽  
Eleanor A. Power ◽  
Daniel B. Larremore ◽  
Cristopher Moore

Author(s):  
Zitai Chen ◽  
Chuan Chen ◽  
Zibin Zheng ◽  
Yi Zhu

Clustering on multilayer networks has been shown to be a promising approach to enhance the accuracy. Various multilayer networks clustering algorithms assume all networks derive from a latent clustering structure, and jointly learn the compatible and complementary information from different networks to excavate one shared underlying structure. However, such an assumption is in conflict with many emerging real-life applications due to the existence of noisy/irrelevant networks. To address this issue, we propose Centroid-based Multilayer Network Clustering (CMNC), a novel approach which can divide irrelevant relationships into different network groups and uncover the cluster structure in each group simultaneously. The multilayer networks is represented within a unified tensor framework for simultaneously capturing multiple types of relationships between a set of entities. By imposing the rank-(Lr,Lr,1) block term decomposition with nonnegativity, we are able to have well interpretations on the multiple clustering results based on graph cut theory. Numerically, we transform this tensor decomposition problem to an unconstrained optimization, thus can solve it efficiently under the nonlinear least squares (NLS) framework. Extensive experimental results on synthetic and real-world datasets show the effectiveness and robustness of our method against noise and irrelevant data.


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