We use cookies to improve your experience with our site.
谢浩然, 李青, 蔡毅. 分众分类法中的一种针对个性化搜索社区感知的资源构建[J]. 计算机科学技术学报, 2012, 27(3): 599-610. DOI: 10.1007/s11390-012-1247-7
引用本文: 谢浩然, 李青, 蔡毅. 分众分类法中的一种针对个性化搜索社区感知的资源构建[J]. 计算机科学技术学报, 2012, 27(3): 599-610. DOI: 10.1007/s11390-012-1247-7
Hao-Ran Xie, Qing Li, Yi Cai. Community-Aware Resource Profiling for Personalized Search in Folksonomy[J]. Journal of Computer Science and Technology, 2012, 27(3): 599-610. DOI: 10.1007/s11390-012-1247-7
Citation: Hao-Ran Xie, Qing Li, Yi Cai. Community-Aware Resource Profiling for Personalized Search in Folksonomy[J]. Journal of Computer Science and Technology, 2012, 27(3): 599-610. DOI: 10.1007/s11390-012-1247-7

分众分类法中的一种针对个性化搜索社区感知的资源构建

Community-Aware Resource Profiling for Personalized Search in Folksonomy

  • 摘要: 近年来,大量协同标签(又名分众分类)系统出现在Web 2.0社区中.伴随着日益增长的海量数据,如何利用这些语义标签来协助用户搜索到他们感兴趣的信息资源成为了一个至关重要的问题.协同标签系统给用户提供了一个可以标记资源的环境,同时大多数用户根据自己的观点和感受做标记.然而,用户对于资源却有着不同的观点和感受,如有些用户可能会有相近的观点但却和其他人有着不同见解.因此,对于资源的建模如果采用所有用户给出的标签则很不合理.为了解决这个问题,我们在本文中提出了一种社区感知的方法从通过社交过滤来构建资源.为了发现用户社区,我们讨论并提出了三种不同的策略.并且,我们还提出了通过将交换融合法和修订的需求相关性函数的结合,个性化搜索方法根据用户的偏好和查询来优化个性化资源的排序.我们在真实生活中的一个数据集上进行了实验,把我们提出的方法和基准方法进行了性能比较.实验结果证实了我们的观点及所提出方法的有效性.

     

    Abstract: In recent years, there is a fast proliferation of collaborative tagging (a.k.a. folksonomy) systems in Web 2.0 communities. With the increasingly large amount of data, how to assist users in searching their interested resources by utilizing these semantic tags becomes a crucial problem. Collaborative tagging systems provide an environment for users to annotate resources, and most users give annotations according to their perspectives or feelings. However, users may have different perspectives or feelings on resources, e.g., some of them may share similar perspectives yet have a conflict with others. Thus, modeling the profile of a resource based on tags given by all users who have annotated the resource is neither suitable nor reasonable. We propose, to tackle this problem in this paper, a community-aware approach to constructing resource profiles via social filtering. In order to discover user communities, three different strategies are devised and discussed. Moreover, we present a personalized search approach by combining a switching fusion method and a revised needs-relevance function, to optimize personalized resources ranking based on user preferences and user issued query. We conduct experiments on a collected real life dataset by comparing the performance of our proposed approach and baseline methods. The experimental results verify our observations and effectiveness of proposed method.

     

/

返回文章
返回