Community-based influence maximization for viral marketing

Derived from the idea of word-to-mouth advertising and with applying information diffusion theory, viral marketing attracts wide research interests because of its business value. As an effective marketing strategy, viral marketing is to select a small set of initial users based on trust among close social circles of friends or families so as to maximize the spread of influence in the social network. In this paper, we propose a new community-based influence maximization method for viral marketing that integrates community detection into influence diffusion modeling, instead of performing community detection independently, to improve the performance. We first build a comprehensive latent variable model which captures community-level topic interest, item-topic relevance and community membership distribution of each user, and we propose a collapsed Gibbs sampling algorithm to train the model. Then we infer community-to-community influence strength using topic-irrelevant influence and community topic interest, and further infer user-to-user influence strength using community-to-community influence strength and community membership distribution of each user. Finally we propose a community-based heuristic algorithm to mine influential nodes that selects the influential nodes with a divide-and-conquer strategy, considering both topic-aware and community-relevant to enhance quality and improve efficiency. Extensive experiments are conducted to evaluate effectiveness and efficiency of our proposals. The results validate our ideas and show the superiority of our method compared with state-of-the-art influence maximization algorithms.

[1]  Andreas Krause,et al.  Cost-effective outbreak detection in networks , 2007, KDD '07.

[2]  Ford Lumban Gaol Recent Progress in Data Engineering and Internet Technology , 2012 .

[3]  M. Newman,et al.  Finding community structure in very large networks. , 2004, Physical review. E, Statistical, nonlinear, and soft matter physics.

[4]  Song Wang,et al.  OASNET: an optimal allocation approach to influence maximization in modular social networks , 2010, SAC '10.

[5]  Michael I. Jordan,et al.  Latent Dirichlet Allocation , 2001, J. Mach. Learn. Res..

[6]  Wei Chen,et al.  Efficient influence maximization in social networks , 2009, KDD.

[7]  Yannis Sismanis,et al.  Scalable topic-specific influence analysis on microblogs , 2014, WSDM.

[8]  Gregor Heinrich Parameter estimation for text analysis , 2009 .

[9]  Vincenzo Loia,et al.  A semantic-grained perspective of latent knowledge modeling , 2017, Inf. Fusion.

[10]  Xiaowei Xu,et al.  GSLDA: LDA-based group spamming detection in product reviews , 2018, Applied Intelligence.

[11]  Huan Liu,et al.  Toward Time-Evolving Feature Selection on Dynamic Networks , 2016, 2016 IEEE 16th International Conference on Data Mining (ICDM).

[12]  Wei Chen,et al.  Scalable influence maximization for prevalent viral marketing in large-scale social networks , 2010, KDD.

[13]  Yasushi Sakurai,et al.  Online multiscale dynamic topic models , 2010, KDD.

[14]  Hui Xiong,et al.  Introduction to special section on intelligent mobile knowledge discovery and management systems , 2013, ACM Trans. Intell. Syst. Technol..

[15]  Laks V. S. Lakshmanan,et al.  CELF++: optimizing the greedy algorithm for influence maximization in social networks , 2011, WWW.

[16]  Yi Zhang,et al.  Detecting and predicting the topic change of Knowledge-based Systems: A topic-based bibliometric analysis from 1991 to 2016 , 2017, Knowl. Based Syst..

[17]  S. Kalish A New Product Adoption Model with Price, Advertising, and Uncertainty , 1985 .

[18]  Yu Wang,et al.  Community-based greedy algorithm for mining top-K influential nodes in mobile social networks , 2010, KDD.

[19]  Nina Rizun,et al.  Modeling the Customer's Contextual Expectations Based on Latent Semantic Analysis Algorithms , 2017, ISAT.

[20]  Junjie Yao,et al.  Community Level Diffusion Extraction , 2015, SIGMOD Conference.

[21]  Xiaokui Xiao,et al.  Influence maximization: near-optimal time complexity meets practical efficiency , 2014, SIGMOD Conference.

[22]  Reynold Cheng,et al.  Effective Community Search for Large Attributed Graphs , 2016, Proc. VLDB Endow..

[23]  Yitong Wang,et al.  A Potential-Based Node Selection Strategy for Influence Maximization in a Social Network , 2009, ADMA.

[24]  Junghoo Cho,et al.  Social-network analysis using topic models , 2012, SIGIR '12.

[25]  Timothy C. Havens,et al.  Quadratic Program-Based Modularity Maximization for Fuzzy Community Detection in Social Networks , 2015, IEEE Transactions on Fuzzy Systems.

[26]  Evangelos Kanoulas,et al.  Dynamic Clustering of Streaming Short Documents , 2016, KDD.

[27]  Jiawei Han,et al.  Mining topic-level influence in heterogeneous networks , 2010, CIKM.

[28]  C. A. Murthy,et al.  A New Centrality Measure for Influence Maximization in Social Networks , 2011, PReMI.

[29]  Xueqi Cheng,et al.  StaticGreedy: solving the scalability-accuracy dilemma in influence maximization , 2012, CIKM.

[30]  Jianyong Wang,et al.  A dirichlet multinomial mixture model-based approach for short text clustering , 2014, KDD.

[31]  Suh-Yin Lee,et al.  CIM: Community-Based Influence Maximization in Social Networks , 2014, TIST.

[32]  Matthew Richardson,et al.  Mining the network value of customers , 2001, KDD '01.

[33]  Éva Tardos,et al.  Maximizing the Spread of Influence through a Social Network , 2015, Theory Comput..

[34]  Shourya Roy,et al.  Holistic Influence Maximization: Combining Scalability and Efficiency with Opinion-Aware Models , 2016, SIGMOD Conference.

[35]  M. Markus,et al.  Fluctuation theorem for a deterministic one-particle system. , 2004, Physical review. E, Statistical, nonlinear, and soft matter physics.

[36]  Yuan Zhang,et al.  Hierarchical Community-Level Information Diffusion Modeling in Social Networks , 2017, SIGIR.

[37]  Xiaokui Xiao,et al.  Influence Maximization in Near-Linear Time: A Martingale Approach , 2015, SIGMOD Conference.

[38]  Xiaohui Yan,et al.  A biterm topic model for short texts , 2013, WWW.

[39]  Zaihan Yang,et al.  Parametric and Non-parametric User-aware Sentiment Topic Models , 2015, SIGIR.

[40]  Matthew Richardson,et al.  Mining knowledge-sharing sites for viral marketing , 2002, KDD.

[41]  M. de Rijke,et al.  Explainable User Clustering in Short Text Streams , 2016, SIGIR.

[42]  Ning Zhang,et al.  Time-Critical Influence Maximization in Social Networks with Time-Delayed Diffusion Process , 2012, AAAI.

[43]  Jiangtao Cui,et al.  Conformity-aware influence maximization in online social networks , 2014, The VLDB Journal.

[44]  Nicola Barbieri,et al.  Topic-aware social influence propagation models , 2012, Knowledge and Information Systems.

[45]  Tieniu Tan,et al.  Social-Relational Topic Model for Social Networks , 2015, CIKM.

[46]  Jure Leskovec,et al.  Community Detection in Networks with Node Attributes , 2013, 2013 IEEE 13th International Conference on Data Mining.