Community detection and co-author recommendation in co-author networks

With the increasing complexity of scientific research and the expanding scale of projects, scientific research cooperation is an important trend in large-scale research. The analysis of co-authorship networks is a big data problem due to the expanding scale of the literature. Without sufficient data mining, research cooperation will be limited to a similar group, namely, a “small group”, in the co-author networks. This “small group” limits the research results and openness. However, the researchers are not aware of the existence of other researchers due to insufficient big data support. Considering the importance of discovering communities and recommending potential collaborations from a large body of literature, we propose an enhanced clustering algorithm for detecting communities. It includes the selection of an initial central node and the redefinition of the distance and iteration of the central node. We also propose a method that is based on the hilltop algorithm, which is an algorithm that is used in search engines, for recommending co-authors via link analysis. The co-author candidate set is improved by screening and scoring. In screening, the expert set formation of the hilltop algorithm is added. The score is calculated from the durations and quantity of the collaborations. Via experiments, communities can be extracted, and co-authors can be recommended from the big data of the scientific research literature.

[1]  M. A. Muñoz,et al.  Journal of Statistical Mechanics: An IOP and SISSA journal Theory and Experiment Detecting network communities: a new systematic and efficient algorithm , 2004 .

[2]  Jian Yu,et al.  A parameter-free community detection method based on centrality and dispersion of nodes in complex networks , 2015 .

[3]  Maria Cláudia Reis Cavalcanti,et al.  Automatic feature selection for supervised learning in link prediction applications: a comparative study , 2017, Knowledge and Information Systems.

[4]  J. Kertész,et al.  On the equivalence of the label propagation method of community detection and a Potts model approach , 2008, 0803.2804.

[5]  Srinivasan Parthasarathy,et al.  Community Discovery in Social Networks: Applications, Methods and Emerging Trends , 2011, Social Network Data Analytics.

[6]  Giseli Rabello Lopes,et al.  Collaboration Recommendation on Academic Social Networks , 2010, ER Workshops.

[7]  M. Barber,et al.  Detecting network communities by propagating labels under constraints. , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.

[8]  Bo Tian,et al.  Community detection method based on mixed-norm sparse subspace clustering , 2018, Neurocomputing.

[9]  Yicheng Zhang,et al.  Structure-oriented prediction in complex networks , 2018 .

[10]  Bo Yang,et al.  Alternating between consensus and leader selection reveals community structure in networks , 2019, Physica A: Statistical Mechanics and its Applications.

[11]  Katrien Verbert,et al.  IntersectionExplorer, a multi-perspective approach for exploring recommendations , 2019, Int. J. Hum. Comput. Stud..

[12]  M E J Newman,et al.  Finding and evaluating community structure in networks. , 2003, Physical review. E, Statistical, nonlinear, and soft matter physics.

[13]  KimJooho,et al.  Social Network Analysis , 2018, The SAGE International Encyclopedia of Mass Media and Society.

[14]  E. Ott,et al.  Spectral properties of networks with community structure. , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.

[15]  Santo Fortunato,et al.  Finding Statistically Significant Communities in Networks , 2010, PloS one.

[16]  Santo Fortunato,et al.  Community detection in graphs , 2009, ArXiv.

[17]  Zhou Chan,et al.  The cooperation network of Chinese researchers:a perspective of ego-centered social network analysis , 2011 .

[18]  Andrea Lancichinetti,et al.  Detecting the overlapping and hierarchical community structure in complex networks , 2008, 0802.1218.

[19]  Patricio A. Vela,et al.  A Comparative Study of Efficient Initialization Methods for the K-Means Clustering Algorithm , 2012, Expert Syst. Appl..

[20]  Xiao Zhang,et al.  Academic Paper Recommendation Based on Community Detection in Citation-Collaboration Networks , 2016, APWeb.

[21]  Jean-Loup Guillaume,et al.  Fast unfolding of communities in large networks , 2008, 0803.0476.

[22]  Makarand Hastak,et al.  Social network analysis: Characteristics of online social networks after a disaster , 2018, Int. J. Inf. Manag..

[23]  Martin Rosvall,et al.  Maps of random walks on complex networks reveal community structure , 2007, Proceedings of the National Academy of Sciences.

[24]  M. Newman Coauthorship networks and patterns of scientific collaboration , 2004, Proceedings of the National Academy of Sciences of the United States of America.

[25]  Liang Tang,et al.  Global vs local modularity for network community detection , 2018, PloS one.