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Published in: World Wide Web 2/2018

09-06-2017

User interest mining via tags and bidirectional interactions on Sina Weibo

Authors: Lu Deng, Yan Jia, Bin Zhou, Jiuming Huang, Yi Han

Published in: World Wide Web | Issue 2/2018

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Abstract

Sina Weibo, one of the biggest social services in China, provides users with opportunities to share information and express their personal views, leading an explosive growth of information. How to recommend the right information to the proper person among massive data has received considerable critical attention in recent years. One of the main obstacles is the access to user topic interests. In this paper, we proposed an algorithm based on tags and bidirectional interactions to mine user topic interests on Sina Weibo. The algorithm, formulated by user interaction graph, fully takes advantage of the discordance between user interactions. Forward spread and back spread are thus utilized to update tag spread weights. We also quantify the impact of these two spread by tuning parameters on three sub data sets. In order to prove the superiority of the algorithm, we compare our algorithm with famous methods on Sina Weibo. The result demonstrates that our new algorithm outperforms other methods both in precision rate and recall rate, with the ability of mining user interest effectively with respect to tags and bidirectional interactions.

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Literature
1.
go back to reference Blei D M, Ng A Y, Jordan M I, Latent dirichlet allocation, the Journal of machine Learning research, 3, 993–1022, (2003). Blei D M, Ng A Y, Jordan M I, Latent dirichlet allocation, the Journal of machine Learning research, 3, 993–1022, (2003).
2.
go back to reference Blei, D.M., Ng, A.Y., Jordan, M.I.: Latent dirichlet allocation. J. Mach. Learn. Res. 3, 993–1022 (2003)MATH Blei, D.M., Ng, A.Y., Jordan, M.I.: Latent dirichlet allocation. J. Mach. Learn. Res. 3, 993–1022 (2003)MATH
3.
go back to reference Cantador I, Bellogín A, Vallet D: Content-based Recommendation in Social Tagging Systems. In Proceedings of the Fourth ACM Conference on Recommender Systems. New York, pp. 237–240, (2010). Cantador I, Bellogín A, Vallet D: Content-based Recommendation in Social Tagging Systems. In Proceedings of the Fourth ACM Conference on Recommender Systems. New York, pp. 237–240, (2010).
4.
go back to reference China Internet Network Information Center. The 37th Statistical Report on Internet Development in China. (2016). China Internet Network Information Center. The 37th Statistical Report on Internet Development in China. (2016).
5.
go back to reference Deng L, Huang J, Han Y, Zhou B, Liu Q: The Prediction of User Topic Interest Based on Tags and Interaction of Users. 2016 I.E. International Conference on Data Science in Cyberspace (ICDSC), (2016). Deng L, Huang J, Han Y, Zhou B, Liu Q: The Prediction of User Topic Interest Based on Tags and Interaction of Users. 2016 I.E. International Conference on Data Science in Cyberspace (ICDSC), (2016).
6.
go back to reference Ding, Z., Jia, Y., Zhou, B., et al.: Mining topical influencers based on the multirelational network in micro-blogging sites. China Communications. 10(1), 93–104 (2013)CrossRef Ding, Z., Jia, Y., Zhou, B., et al.: Mining topical influencers based on the multirelational network in micro-blogging sites. China Communications. 10(1), 93–104 (2013)CrossRef
7.
go back to reference Fan M, Zhou Q, Zheng T.F, “Mining the Personal Interests of Microbloggers via Exploiting Wikipedia Knowledge”, Computational Linguistics and Intelligent Text Processing. Springer, 2 vol. 2014, 188–200, (2014). Fan M, Zhou Q, Zheng T.F, “Mining the Personal Interests of Microbloggers via Exploiting Wikipedia Knowledge”, Computational Linguistics and Intelligent Text Processing. Springer, 2 vol. 2014, 188–200, (2014).
8.
go back to reference GOLDER S H B A: The structure of collaborative tagging systems, Ithaca: Cornell University Library. (2005). GOLDER S H B A: The structure of collaborative tagging systems, Ithaca: Cornell University Library. (2005).
9.
go back to reference Hotho A, Jäschke R, Schmitz C, et al, Information retrieval in folksonomies: Search and ranking, Springer, (2006). Hotho A, Jäschke R, Schmitz C, et al, Information retrieval in folksonomies: Search and ranking, Springer, (2006).
10.
go back to reference Katakis I, Tsoumakas G, Vlahavas I, Multilabel text classification for automated tag suggestion, ECML PKDD discovery challenge, pp. 75, (2008). Katakis I, Tsoumakas G, Vlahavas I, Multilabel text classification for automated tag suggestion, ECML PKDD discovery challenge, pp. 75, (2008).
11.
go back to reference Li, H., Yan, J., Weihong, H., et al.: Mining user interest in microblogs with a user-topic model. Communications, China. 11(8), 131–144 (2014)CrossRef Li, H., Yan, J., Weihong, H., et al.: Mining user interest in microblogs with a user-topic model. Communications, China. 11(8), 131–144 (2014)CrossRef
12.
go back to reference Liu, Z., Chen, X., Sun, M.: Mining the interests of Chinese microbloggers via keyword extraction. Frontiers of Computer Science in China. 6(1), 76–87 (2012)MathSciNet Liu, Z., Chen, X., Sun, M.: Mining the interests of Chinese microbloggers via keyword extraction. Frontiers of Computer Science in China. 6(1), 76–87 (2012)MathSciNet
13.
go back to reference Michelson, M, Macskassy, S.A: Discovering users topics of interest on twitter: a first look. In Proceedings of the fourth workshop on Analytics for noisy unstructured text data, pp. 73–80, (2010). Michelson, M, Macskassy, S.A: Discovering users topics of interest on twitter: a first look. In Proceedings of the fourth workshop on Analytics for noisy unstructured text data, pp. 73–80, (2010).
14.
go back to reference Mihalcea R, Tarau P: TextRank: Bringing order into texts [C]. (2004). Mihalcea R, Tarau P: TextRank: Bringing order into texts [C]. (2004).
15.
go back to reference Nie Y, Huang J, Li A, et al.: Identifying users based on behavioral-modeling across social media sites. Asia-Pacific Web Conference. Springer International Publishing: 48–55, (2014) Nie Y, Huang J, Li A, et al.: Identifying users based on behavioral-modeling across social media sites. Asia-Pacific Web Conference. Springer International Publishing: 48–55, (2014)
16.
go back to reference Nie, Y., Jia, Y., Li, S., et al.: Identifying users across social networks based on dynamic core interests. Neurocomputing. 210, 107–115 (2016)CrossRef Nie, Y., Jia, Y., Li, S., et al.: Identifying users across social networks based on dynamic core interests. Neurocomputing. 210, 107–115 (2016)CrossRef
17.
go back to reference Ohkura T, Kiyota Y, Nakagawa H: Browsing system for weblog articles based on automated folksonomy. In Proceedings of the WWW 2006 Workshop on the Weblogging Ecosystem: Aggregation, Analysis and Dynamics, WWW. (2006). Ohkura T, Kiyota Y, Nakagawa H: Browsing system for weblog articles based on automated folksonomy. In Proceedings of the WWW 2006 Workshop on the Weblogging Ecosystem: Aggregation, Analysis and Dynamics, WWW. (2006).
18.
go back to reference Porteous Ian, Newman David, Ihler Alexander, Asuncion Arthur, Smyth Padhraic, Welling Max: Fast collapsed gibbs sampling for latent dirichlet allocation, SIGKDD, (2008). Porteous Ian, Newman David, Ihler Alexander, Asuncion Arthur, Smyth Padhraic, Welling Max: Fast collapsed gibbs sampling for latent dirichlet allocation, SIGKDD, (2008).
19.
go back to reference Rosen-Zvi, M., Chemudugunta, C., Griffiths, T., et al.: Learning author-topic models from text corpora. ACM Transactions on Information Systems (TOIS). 28(1), 4 (2010)CrossRef Rosen-Zvi, M., Chemudugunta, C., Griffiths, T., et al.: Learning author-topic models from text corpora. ACM Transactions on Information Systems (TOIS). 28(1), 4 (2010)CrossRef
20.
go back to reference Steinbach M, Kapypis G, Kumar V: A Comparison of Document C1ustering Techniques. Proceedings of KDD Workshop on Text Mining, pp. 109–111, (2000). Steinbach M, Kapypis G, Kumar V: A Comparison of Document C1ustering Techniques. Proceedings of KDD Workshop on Text Mining, pp. 109–111, (2000).
21.
go back to reference Wang, X., Jia, Y., Zhou, B., et al.: Interaction relation based user tag prediction in microblogging site. Computer Engineering & Science. 35(10), 44–50 (2013) Wang, X., Jia, Y., Zhou, B., et al.: Interaction relation based user tag prediction in microblogging site. Computer Engineering & Science. 35(10), 44–50 (2013)
22.
go back to reference Wanga X, Jia Y, Chen RH, Zhou B: Ranking User Tags in Micro-blogging Website. 2015 International Conference on Information Science and Control Engineering, pp. 400–403, (2015). Wanga X, Jia Y, Chen RH, Zhou B: Ranking User Tags in Micro-blogging Website. 2015 International Conference on Information Science and Control Engineering, pp. 400–403, (2015).
23.
go back to reference Xiang, W., Jia, Y., Chen, R.H., et al.: Improving text categorization with semantic knowledge in Wikipedia. IEICE Trans. Inf. Syst. E96-D(12), 2786–2794 (2013)CrossRef Xiang, W., Jia, Y., Chen, R.H., et al.: Improving text categorization with semantic knowledge in Wikipedia. IEICE Trans. Inf. Syst. E96-D(12), 2786–2794 (2013)CrossRef
24.
go back to reference Xu, Z., Fu, Y., Mao, J., et al.: “towards the semantic Web: collaborative tag suggestions”, in collaborative Web tagging workshop WWW2006. Edinburgh, Scotland (2006) Xu, Z., Fu, Y., Mao, J., et al.: “towards the semantic Web: collaborative tag suggestions”, in collaborative Web tagging workshop WWW2006. Edinburgh, Scotland (2006)
25.
go back to reference Xu Z, Lu R, Xiang L, et al: Discovering user interest on twitter with a modified author-topic model, In Web Intelligence and Intelligent Agent Technology (WI-IAT), 2011 IEEE/WIC/ACM International Conference on, pp. 422–429, (2011). Xu Z, Lu R, Xiang L, et al: Discovering user interest on twitter with a modified author-topic model, In Web Intelligence and Intelligent Agent Technology (WI-IAT), 2011 IEEE/WIC/ACM International Conference on, pp. 422–429, (2011).
26.
go back to reference Zhang, B., Zhang, Y., Gao, K.-N., et al.: Combining relation and content analysis for social tagging recommendation. Ruanjian Xuebao/Journal of Software. 23(3), 476–488 (2012) Zhang, B., Zhang, Y., Gao, K.-N., et al.: Combining relation and content analysis for social tagging recommendation. Ruanjian Xuebao/Journal of Software. 23(3), 476–488 (2012)
Metadata
Title
User interest mining via tags and bidirectional interactions on Sina Weibo
Authors
Lu Deng
Yan Jia
Bin Zhou
Jiuming Huang
Yi Han
Publication date
09-06-2017
Publisher
Springer US
Published in
World Wide Web / Issue 2/2018
Print ISSN: 1386-145X
Electronic ISSN: 1573-1413
DOI
https://doi.org/10.1007/s11280-017-0469-6

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