Labeling actors in multi-view social networks by integrating information from within and across multiple views

Real world social networks typically consist of actors (individuals) that are linked to other actors or different types of objects via links of multiple types. Different types of relationships induce different views of the underlying social network. We consider the problem of labeling actors in such multi-view networks based on the connections among them. Given a social network in which only a subset of the actors are labeled, our goal is to predict the labels of the rest of the actors. We introduce a new random walk kernel, namely the Inter-Graph Random Walk Kernel (IRWK), for labeling actors in multi-view social networks. IRWK combines information from within each of the views as well as the links across different views. The results of our experiments on two real-world multi-view social networks show that: (i) IRWK classifiers outperform or are competitive with several state-of-the-art methods for labeling actors in a social network; (ii) IRWKs are robust with respect to different choices of user-specified parameters; and (iii) IRWK kernel computation converges very fast within a few iterations.

[1]  Tyler H McCormick,et al.  LATENT SPACE MODELS FOR MULTIVIEW NETWORK DATA. , 2017, The annals of applied statistics.

[2]  Yunming Ye,et al.  Multi-attribute and relational learning via hypergraph regularized generative model , 2018, Neurocomputing.

[3]  Karsten M. Borgwardt,et al.  Halting in Random Walk Kernels , 2015, NIPS.

[4]  Jing Liu,et al.  Partially Shared Latent Factor Learning With Multiview Data , 2015, IEEE Transactions on Neural Networks and Learning Systems.

[5]  Mason A. Porter,et al.  Multilayer networks , 2013, J. Complex Networks.

[6]  L. Getoor,et al.  Link-Based Classification , 2003, Encyclopedia of Machine Learning and Data Mining.

[7]  William W. Cohen,et al.  Semi-Supervised Classification of Network Data Using Very Few Labels , 2010, 2010 International Conference on Advances in Social Networks Analysis and Mining.

[8]  Matteo Magnani,et al.  Multilayer Social Networks , 2016 .

[9]  Jure Leskovec,et al.  node2vec: Scalable Feature Learning for Networks , 2016, KDD.

[10]  Gita Reese Sukthankar,et al.  Multi-label relational neighbor classification using social context features , 2013, KDD.

[11]  Vasant Honavar,et al.  On the utility of abstraction in labeling actors in social networks , 2013, 2013 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2013).

[12]  Foster J. Provost,et al.  Classification in Networked Data: a Toolkit and a Univariate Case Study , 2007, J. Mach. Learn. Res..

[13]  Anna Monreale,et al.  Multidimensional networks: foundations of structural analysis , 2013, World Wide Web.

[14]  Jennifer Neville,et al.  Across-Model Collective Ensemble Classification , 2011, AAAI.

[15]  S. V. N. Vishwanathan,et al.  Graph kernels , 2007 .

[16]  Roman Garnett,et al.  Propagation kernels: efficient graph kernels from propagated information , 2015, Machine Learning.

[17]  Jeffrey Dean,et al.  Efficient Estimation of Word Representations in Vector Space , 2013, ICLR.

[18]  Jiawei Han,et al.  Ranking-based classification of heterogeneous information networks , 2011, KDD.

[19]  Mason A. Porter,et al.  Community Detection in Temporal Multilayer Networks, with an Application to Correlation Networks , 2014, Multiscale Model. Simul..

[20]  Zoubin Ghahramani,et al.  Combining active learning and semi-supervised learning using Gaussian fields and harmonic functions , 2003, ICML 2003.

[21]  Bernhard Schölkopf,et al.  Learning with Local and Global Consistency , 2003, NIPS.

[22]  Xiang Li,et al.  Classification with Active Learning and Meta-Paths in Heterogeneous Information Networks , 2015, CIKM.

[23]  Jiawei Han,et al.  Text Classification with Heterogeneous Information Network Kernels , 2016, AAAI.

[24]  Huan Liu,et al.  Relational learning via latent social dimensions , 2009, KDD.

[25]  Gerhard Weikum,et al.  Graffiti: graph-based classification in heterogeneous networks , 2011, World Wide Web.

[26]  Lise Getoor,et al.  Collective Classification in Network Data , 2008, AI Mag..

[27]  Steven Skiena,et al.  DeepWalk: online learning of social representations , 2014, KDD.

[28]  Pinar Yanardag,et al.  Deep Graph Kernels , 2015, KDD.

[29]  Huan Liu,et al.  Scalable learning of collective behavior based on sparse social dimensions , 2009, CIKM.

[30]  Chia-Hua Ho,et al.  An improved GLMNET for l1-regularized logistic regression , 2011, J. Mach. Learn. Res..

[31]  Tom A. B. Snijders,et al.  Social Network Analysis , 2011, International Encyclopedia of Statistical Science.

[32]  Mingzhe Wang,et al.  LINE: Large-scale Information Network Embedding , 2015, WWW.

[33]  Vasant Honavar,et al.  Labeling Actors in Social Networks Using a Heterogeneous Graph Kernel , 2014, SBP.

[34]  T. B. Murphy,et al.  Joint Modelling of Multiple Network Views , 2013, 1301.3759.