DocumentCode :
70015
Title :
Modeling Temporal Activity Patterns in Dynamic Social Networks
Author :
Raghavan, Varsha ; Steeg, Greg Ver ; Galstyan, Aram ; Tartakovsky, Alexander G.
Author_Institution :
Qualcomm Flarion Technol., Inc., Bridgewater, NJ, USA
Volume :
1
Issue :
1
fYear :
2014
fDate :
Mar-14
Firstpage :
89
Lastpage :
107
Abstract :
The focus of this work is on developing probabilistic models for temporal activity of users in social networks (e.g., posting and tweeting) by incorporating the social network influence as perceived by the user. Although prior work in this area has developed sophisticated models for user activity, these models either ignore social network influence completely or incorporate it in an implicit manner. We overcome the nontransparency of the network in the model at the individual scale by proposing a coupled hidden Markov model (HMM), where each user´s activity evolves according to a Markov chain with a hidden state that is influenced by the collective activity of the friends of the user. We develop generalized Baum-Welch and Viterbi algorithms for parameter learning and state estimation for the proposed framework. We then validate the proposed model using a significant corpus of user activity on Twitter. Our numerical studies show that with sufficient observations to ensure accurate model learning, the proposed framework explains the observed data better than either a renewal process-based model or a conventional (uncoupled) HMM. We also demonstrate the utility of the proposed approach in predicting the time to the next tweet. Finally, clustering in the model parameter space is shown to result in distinct natural clusters of users characterized by the interaction dynamic between a user and his network.
Keywords :
hidden Markov models; learning (artificial intelligence); pattern clustering; social networking (online); Baum-Welch algorithms; HMM; Markov chain; Twitter; Viterbi algorithms; dynamic social networks; hidden Markov model; model parameter space clustering; parameter learning; probabilistic models; renewal process-based model; social network influence; state estimation; temporal activity pattern modeling; user activity; Biological system modeling; Computational modeling; Data models; Hidden Markov models; Mathematical model; Numerical models; Social network services; Activity profile modeling; Twitter; coupled hidden Markov model (coupled HMM); data fitting; explanation; hidden Markov model (HMM); prediction; social network influence; user clustering;
fLanguage :
English
Journal_Title :
Computational Social Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2329-924X
Type :
jour
DOI :
10.1109/TCSS.2014.2307453
Filename :
6784511
Link To Document :
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