Connecting comments and tags: improved modeling of social tagging systems

Dawei Yin, Shengbo Guo, Boris Chidlovskii, Brian D. Davison, C. Archambeau, Guillaume Bouchard
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引用次数: 32

Abstract

Collaborative tagging systems are now deployed extensively to help users share and organize resources. Tag prediction and recommendation can simplify and streamline the user experience, and by modeling user preferences, predictive accuracy can be significantly improved. However, previous methods typically model user behavior based only on a log of prior tags, neglecting other behaviors and information in social tagging systems, e.g., commenting on items and connecting with other users. On the other hand, little is known about the connection and correlations among these behaviors and contexts in social tagging systems. In this paper, we investigate improved modeling for predictive social tagging systems. Our explanatory analyses demonstrate three significant challenges: coupled high order interaction, data sparsity and cold start on items. We tackle these problems by using a generalized latent factor model and fully Bayesian treatment. To evaluate performance, we test on two real-world data sets from Flickr and Bibsonomy. Our experiments on these data sets show that to achieve best predictive performance, it is necessary to employ a fully Bayesian treatment in modeling high order relations in social tagging system. Our methods noticeably outperform state-of-the-art approaches.
连接评论和标签:改进的社会标签系统建模
协作标记系统现在广泛部署,以帮助用户共享和组织资源。标签预测和推荐可以简化和简化用户体验,通过对用户偏好进行建模,可以显著提高预测精度。然而,以前的方法通常只基于先前标签的日志来建模用户行为,而忽略了社交标签系统中的其他行为和信息,例如评论物品和与其他用户联系。另一方面,人们对社会标签系统中这些行为和语境之间的联系和相关性知之甚少。在本文中,我们研究了预测社会标签系统的改进建模。我们的解释性分析显示了三个重大挑战:耦合高阶交互、数据稀疏性和项目冷启动。我们使用广义潜在因素模型和全贝叶斯处理来解决这些问题。为了评估性能,我们对来自Flickr和Bibsonomy的两个真实数据集进行了测试。我们在这些数据集上的实验表明,为了获得最佳的预测性能,有必要在社会标签系统的高阶关系建模中采用完全的贝叶斯处理。我们的方法明显优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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