Finding influentials in twitter: A temporal influence ranking model
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Version 1 2020-07-07, 15:03Version 1 2020-07-07, 15:03
conference contribution
posted on 2024-06-18, 21:35 authored by X Ma, C Li, J Bailey, S WijewickremaCopyright © 2016, Australian Computer Society, Inc. With the growing popularity of online social media, identifying influential users in these social networks has become very popular. Existing works have studied user attributes, network structure and user interactions when measuring user influence. In contrast to these works, we focus on user behavioural characteristics. We investigate the temporal dynamics of user activity patterns and how these patterns affect user interactions. We assimilate such characteristics into a PageRank based temporal in uence ranking model (TIR) to identify influential users. The transition probability in TIR is predicted by a logistic regression model and the random walk, biased according to users' temporal activity patterns. Experiments demonstrate that TIR has better performance and is more stable than the existing models in global influence ranking and friend recommendation.
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Pagination
5-14Location
Canberra, Australian Capital TerritoryStart date
2016-12-06End date
2016-12-08Language
engPublication classification
E1.1 Full written paper - refereedTitle of proceedings
AusDM 2016 Proceedings of the 14th Australasian Data Mining ConferenceEvent
Australasian Data Mining Conference (2016 : 14th : Canberra, Australian Capital Territory)Publisher
Australian Computer SocietyPlace of publication
Sydney, N.S.W.Publication URL
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