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Using proximity to predict activity in social networks

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Published:16 April 2012Publication History

ABSTRACT

The structure of a social network contains information useful for predicting its evolution. We show that structural information also helps predict activity. People who are "close" in some sense in a social network are more likely to perform similar actions than more distant people. We use network proximity to capture the degree to which people are "close" to each other. In addition to standard proximity metrics used in the link prediction task, such as neighborhood overlap, we introduce new metrics that model different types of interactions that take place between people. We study this claim empirically using data about URL forwarding activity on the social media sites Digg and Twitter. We show that structural proximity of two users in the follower graph is related to similarity of their activity, i.e., how many URLs they both forward. We also show that given friends' activity, knowing their proximity to the user can help better predict which URLs the user will forward. We compare the performance of different proximity metrics on the activity prediction task and find that metrics that take into account the attention-limited nature of interactions in social media lead to substantially better predictions.

References

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  1. Using proximity to predict activity in social networks

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    • Published in

      cover image ACM Other conferences
      WWW '12 Companion: Proceedings of the 21st International Conference on World Wide Web
      April 2012
      1250 pages
      ISBN:9781450312301
      DOI:10.1145/2187980

      Copyright © 2012 Authors

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      Association for Computing Machinery

      New York, NY, United States

      Publication History

      • Published: 16 April 2012

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      Overall Acceptance Rate1,899of8,196submissions,23%

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