Abstract
In conventional tag-based recommendation system, the sparsity and impurity of social tag data significantly increase the complexity of data processing and affect the accuracy of recommendation. To address these problems, we consider from the perspective of resource provider and propose a resource recommendation framework based on regular tags and user operation feedbacks. Based on these concepts, we design the user feature representation integrating the information of regular tags, user operations and time factor, so as to precisely discover the user preference on different tags. The personalized recommendation algorithm is designed based on collaborative filtering mechanism by analyzing the general preference modeling of different users. We conduct the experimental evaluation on a real recommendation system with extensive user and tag data. Compared with traditional user-based collaborative filtering and the social-tag-based collaborative filtering, our approach can effectively alleviate the sparsity problem of tag data and user rating data, and our proposed user feature is more accurate to improve the performance of the recommendation system.
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A popular instant messager client in China, which integrates the functions of IM, social network, resource publishing and public services.
References
Bennett, J., Lanning, S., Netflix, N.: The netflix prize. In: KDD Cup and Workshop in Conjunction with KDD (2009)
Cai, Q., Han, D.M., Li, H.S., Hu, Y.G., Chen, Y.: Personalized resource recommendation based on tags and collaborative filtering. Comput. Sci. 41(1), 69–71 (2014)
Chen, J.M., Sun, Y.S., Chen, M.C.: A hybrid tag-based recommendation mechanism to support prior knowledge construction. In: IEEE International Conference on Advanced Learning Technologies, pp. 23–25 (2012)
Cheng, Y., Qiu, G., Bu, J., Liu, K., Han, Y., Wang, C., Chen, C.: Model bloggers’ interests based on forgetting mechanism. In: International Conference on World Wide Web, pp. 1129–1130 (2008)
De Gemmis, M., Lops, P., Semeraro, G., Basile, P.: Integrating tags in a semantic content-based recommender. In: ACM Conference on Recommender Systems (2008)
Durao, F., Dolog, P.: A personalized tag-based recommendation in social web systems. In: International Workshop on Adaptation and Personalization for Web, pp. 40–49 (2012)
Firan, C.S., Nejdl, W., Paiu, R.: The benefit of using tag-based profiles. In: American Web Conference, pp. 32–41 (2007)
Jin, J., Chen, Q.: A trust-based top-k recommender system using social tagging network. In: International Conference on Fuzzy Systems and Knowledge Discovery, pp. 1270–1274 (2012)
Linden, G., Smith, B., York, J.: Amazon.com recommendations: item-to-item collaborative filtering. IEEE Internet Comput. 7(1), 76–80 (2010)
Ma, T., Zhou, J., Tang, M., Tian, Y., Al-Dhelaan, A., Al-Rodhaan, M., Lee, S.: Social network and tag sources based augmenting collaborative recommender system. IEICE Trans. Inf. Syst. 98(4), 902–910 (2015)
Mathes, A.: Folksonomies - cooperative classification and communication through shared matadata. Comput. Mediated Commun. 47(10), 1–13 (2004)
Mishne, G.: Autotag: a collaborative approach to automated tag assignment for weblog posts. In: International Conference on World Wide Web (2006)
Pan, R., Xu, G., Dolog, P.: Improving recommendations in tag-based systems with spectral clustering of tag neighbors. In: Park, J.J., Chao, H.-C., Obaidat, M.S., Kim, J. (eds.) CSA 2011 and WCC 2011. LNEE, vol. 114, pp. 355–364. Springer, Netherlands (2012)
Sun, G., Liu, G., Zhao, L., Xu, J., Liu, A., Zhou, X.: A social trust path recommendation system in contextual online social networks. In: Chen, L., Jia, Y., Sellis, T., Liu, G. (eds.) APWeb 2014. LNCS, vol. 8709, pp. 652–656. Springer, Heidelberg (2014)
Yuan, Z.M., Huang, C., Sun, X.Y., Li, X.X., Xu, D.R.: A microblog recommendation algorithm based on social tagging and a temporal interest evolution model. J. Zhejiang Univ. Ser. C Comput. Electron. 16(7), 532–540 (2015)
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Liu, S., Liu, Y., Xie, Q. (2016). Personalized Resource Recommendation Based on Regular Tag and User Operation. In: Li, F., Shim, K., Zheng, K., Liu, G. (eds) Web Technologies and Applications. APWeb 2016. Lecture Notes in Computer Science(), vol 9932. Springer, Cham. https://doi.org/10.1007/978-3-319-45817-5_9
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