Difference between revisions of "Dan Cosley, AAAI, 2010"

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== Summary ==
 
== Summary ==
In this [[Category::paper]], the authors propose a novel co-clustering framework, which takes advantage of networking information between users and tags in social media, to discover these [[AddressesProblem::overlapping communities]]. The basic ideas are:
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In this [[Category::paper]], the authors consider two of the most fundamental definitions of influence, one based on a small set of “snapshot” observations of a social network and the other based on detailed temporal dynamics. The former is particularly useful because large-scale social network data sets are often available only in snapshots or crawls. The latter however provides a more detailed process model of how influence spreads. The authors studied the relationship between these two ways of measuring influence, in particular establishing how to infer the more detailed temporal measure from the more readily observable snapshot measure. It validates the analysis using the history of social interactions on Wikipedia; the result is the first large-scale study to exhibit a direct relationship between snapshot and temporal models of [[AddressesProblem::social influence]].

Revision as of 23:03, 3 April 2011

Citation

Dan Cosley, Daniel Huttenlocher, Jon Kleinberg, Xiangyang Lan, Siddarth Suri. Sequential Influence Models in Social Network. Association for the Advancement of Artificial Intelligence. 2010.

Online Version

http://www.cs.cornell.edu/home/kleinber/icwsm10-seq.pdf

Databases

Wikipedia [1]

Summary

In this paper, the authors consider two of the most fundamental definitions of influence, one based on a small set of “snapshot” observations of a social network and the other based on detailed temporal dynamics. The former is particularly useful because large-scale social network data sets are often available only in snapshots or crawls. The latter however provides a more detailed process model of how influence spreads. The authors studied the relationship between these two ways of measuring influence, in particular establishing how to infer the more detailed temporal measure from the more readily observable snapshot measure. It validates the analysis using the history of social interactions on Wikipedia; the result is the first large-scale study to exhibit a direct relationship between snapshot and temporal models of social influence.