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IPCCC 2013 Minimum-sized Positive Influential Node Set Selection for Social Networks: Considering Both Positive and Negative Influences Jing (Selena) He and Hisham M. Haddad Department of Computer Science, Kennesaw State University Shouling Ji, Xiaojing Liao, and Raheem Beyah School of Electrical and Computer Engineering, Georgia Institute of Technology 1 OUTLINE Motivation Problem Definition Greedy Algorithm Performance Evaluation Conclusion 2 Motivation o Example & Applications o Related Work o Contributions 3 Motivation INTRODUCTION What is a social network? o The graph of relationships and interactions within a group of individuals 4 Motivation SOCIAL NETWORK AND SPREAD OF INFLUENCE Social network plays a fundamental role as a medium for the spread of INFLUENCE among its members o Opinions, ideas, information, innovation… Direct Marketing takes the “word-of-mouth” effects to significantly increase profits (facebook, twitter, myspace, …) 5 Motivation MOTIVATION o o o o 900 million users, Apr. 2012 the 3rd largest ― “Country” in the world More visitors than Google Action: Update statues, Create event o More than 4 billion images o Action: Add tags, Add favorites Social networks already become a bridge to connect our daily life and the virtual web space o 2009, 2 billion tweets per quarter o 2010, 4 billion tweets per quarter o Action: Post tweets, Retweet 6 Motivation EXAMPLE Who are the positively influential leaders in a community? Marketer Alice Find minimum-sized node (user) set in a social network that could positively influence every node in the network 7 Motivation APPLICATIONS Smoking intervention program Promote new products Advertising Social recommendation Expert finding … 8 Motivation RELATED WORK Influence Maximization (IM) Problem [Kempe03] o Select k nodes, maximize the expected number of influenced individuals Positive Influence Dominating Set (PIDS) [Wang11] o Minimum-sized nominating set D, every other node has at least half of its neighbors in D 9 Motivation OUR CONTRIBUTIONS Consider both positive and negative influences New optimization problem - Minimum-sized Positive Influential Node Set (MPINS) o Minimum-sized node set that could positively influence every node in the network no less than a threshold θ Propose a greedy algorithm to solve MPINS Conduct simulations to validate the proposed algorithm 10 Problem Definition o Network Model o Diffusion Model o Problem Definition 11 Problem Definition NETWORK MODEL A social Social network is represented as a undirected graph influence represented by the weights on the edges o Positive influence o Negative influence Nodes start either active or inactive An active node may trigger activation of neighboring nodes based on a pre-defined threshold θ Monotonicity deactivate assumption: active nodes never 12 Problem Definition DIFFUSION MODEL Positive influence Negative influence Ultimate influence 13 Problem Definition MINIMUM-SIZED POSITIVE INFLUENCE NODE SET SELECTION PROBLEM (MPINS) Given a social network o a threshold θ Goal o The initially selected active node set denoted by I could positively influence every other node in the network o , Objective o Minimize the size of I o 14 Greedy Algorithm o Contribution Function o Example o Correctness Proof 15 Greedy algorithm CONTRIBUTION FUNCTION 16 Greedy algorithm TWO-PHASE ALGORITHM Maximal Independent Set (M) Greedy algorithm 17 Greedy algorithm EXAMPLE 18 18 Greedy algorithm CORRECTNESS PROOF 19 Performance Evaluation o Simulation Settings o Simulation Results 20 Performance Evaluation SIMULATION SETTINGS Generate random graph Randomly generate the weighs on the edges For each specific setting, generate 100 instances of the graph. The results are the average values of these 100 instances 21 21 Performance Evaluation SIMULATION RESULTS – SMALL SCALE 22 22 Performance Evaluation SIMULATION RESULTS – LARGE SCALE 23 23 Performance Evaluation SIMULATION RESULTS 24 24 Conclusion CONCLUSION We study MPINS selection problem considering both positive and negative influences, which has useful commercial applications in social networks We propose a greedy algorithm to solve the problem We validate the proposed algorithm through simulations on random graphs representing small and large size networks 25 25 RELATED REFERENCES [Kempe03] D. Kempe, J. Kleinberg, and E. Tardos, Maximizing the Spread of Influence through a Social Network, KDD, 2003. [Wang11] F. Wang, H. Du, E. Camacho, K. Xu, W. Lee, Yan, Shi, and S. Shan, On Positive Influence Dominating Sets in Social Networks, TCS, 2011. 26 26 Q&A 27