End to end influence maximization for HIV prevention

This work aims to overcome the challenges in deploying influence maximization to support community driven interventions. Influence maximization is a crucial technique used in preventative health interventions, such as HIV prevention amongst homeless youth. Dropin centers for homeless youth train a subset of youth as peer leaders who will disseminate information about HIV through their social networks. The challenge is to find a small set of peer leaders who will have the greatest possible influence. While many algorithms have been proposed for influence maximization, none can be feasibly deployed by a service provider: existing algorithms require costly surveys of the entire social network of the youth to provide input data, and high performance computing resources to run the algorithm itself. Both requirements are crucial bottlenecks to widespread use of influence maximization in real world interventions. To address the above challenges, this paper introduces the CHANGE agent for influence maximization. CHANGE handles the end-to-end process of influence maximization, from data collection to peer leader selection. Crucially, CHANGE only surveys a fraction of the youth to gather network data and minimizes computational cost while providing comparable performance to previously proposed algorithms. We carried out a pilot study of CHANGE in collaboration with a drop-in center serving homeless youth in a major U.S. city. CHANGE surveyed only 18% of the youth to construct its social network. However, the peer leaders it selected reached just as many youth as previously field-tested algorithms which surveyed the entire network. This is the first real-world study of a network sampling algorithm for influence maximization. 1

[1]  Nicole Immorlica,et al.  Maximizing Influence in an Unknown Social Network , 2018, AAAI.

[2]  N. Milburn,et al.  Mobilizing homeless youth for HIV prevention: a social network analysis of the acceptability of a face-to-face and online social networking intervention. , 2012, Health education research.

[3]  Pradeep Varakantham,et al.  Robust influence Maximization , 2016 .

[4]  Haifeng Xu,et al.  Using Social Networks to Aid Homeless Shelters: Dynamic Influence Maximization under Uncertainty , 2016, AAMAS.

[5]  T. Valente,et al.  Identifying Opinion Leaders to Promote Behavior Change , 2007, Health education & behavior : the official publication of the Society for Public Health Education.

[6]  Nicole Immorlica,et al.  Uncharted but not Uninfluenced: Influence Maximization with an Uncertain Network , 2017, AAMAS.

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

[8]  Edith Cohen,et al.  Sketch-based Influence Maximization and Computation: Scaling up with Guarantees , 2014, CIKM.

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

[10]  Milind Tambe,et al.  Influence Maximization in the Field: The Arduous Journey from Emerging to Deployed Application , 2017, AAMAS.

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

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

[13]  Eric Rice,et al.  Online Social Networking Technologies, HIV Knowledge, and Sexual Risk and Testing Behaviors Among Homeless Youth , 2010, AIDS and Behavior.

[14]  N. Milburn,et al.  Pro-social and problematic social network influences on HIV/AIDS risk behaviours among newly homeless youth in Los Angeles , 2007, AIDS care.

[15]  Arun G. Chandrasekhar,et al.  The Diffusion of Microfinance , 2012, Science.

[16]  T. Valente,et al.  Peers, schools, and adolescent cigarette smoking. , 2001, The Journal of adolescent health : official publication of the Society for Adolescent Medicine.

[17]  Milind Tambe,et al.  Towards Robust Multi-objective Optimization Under Model Uncertainty for Energy Conservation , 2012 .