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Topic-aware social influence propagation models

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Abstract

The study of influence-driven propagations in social networks and its exploitation for viral marketing purposes has recently received a large deal of attention. However, regardless of the fact that users authoritativeness, expertise, trust and influence are evidently topic-dependent, the research on social influence has surprisingly largely overlooked this aspect. In this article, we study social influence from a topic modeling perspective. We introduce novel topic-aware influence-driven propagation models that, as we show in our experiments, are more accurate in describing real-world cascades than the standard (i.e., topic-blind) propagation models studied in the literature. In particular, we first propose simple topic-aware extensions of the well-known Independent Cascade and Linear Threshold models. However, these propagation models have a very large number of parameters which could lead to overfitting. Therefore, we propose a different approach explicitly modeling authoritativeness, influence and relevance under a topic-aware perspective. Instead of considering user-to-user influence, the proposed model focuses on user authoritativeness and interests in a topic, leading to a drastic reduction in the number of parameters of the model. We devise methods to learn the parameters of the models from a data set of past propagations. Our experimentation confirms the high accuracy of the proposed models and learning schemes.

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Notes

  1. Note that the present manuscript is an invited extended version of our paper presented at the ICDM 2012 conference with the same title [2].

  2. www.isi.edu/~lerman/downloads/digg2009.html.

  3. http://www.cs.sfu.ca/~sja25/personal/datasets/.

  4. This is in accordance with the experiments in [19] that firstly introduced the \(\varDelta \) influence window.

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Acknowledgments

This research was partially supported by the Torres Quevedo Program of the Spanish Ministry of Science and Innovation and partially funded by the European Union 7th Framework Programme (FP7/2007-2013) under Grant No. 270239 (ARCOMEM).

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Correspondence to Francesco Bonchi.

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Barbieri, N., Bonchi, F. & Manco, G. Topic-aware social influence propagation models. Knowl Inf Syst 37, 555–584 (2013). https://doi.org/10.1007/s10115-013-0646-6

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