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An Incremental Clustering Approach to Personalized Tag Recommendations

机译:个性化标签建议的增量聚类方法

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Volumes of user-generated contents have caused the problem of information overload and hindered Internet users from browsing and retrieving information. Social tagging that allows users to annotate resources with free preferred keywords to ease the access to their collecting resources. Though social tagging benefits users managing their resources, it always suffers the problems such as diverse and/or unchecked vocabulary and unwillingness to tag because tags are freely and voluntarily assigned by users. Tag recommender systems, which follow some criteria to select from the tag space the most relevant tags to the user's annotating resource, drastically transfer the tagging process from generation to recognition to reduce user's cognitive effort and time. This study takes personalized tag recommendation as an incremental clustering problem and proposes a Progressive Expansion-based Tag (PET) recommendation technique. The incremental clustering assumes each object appears in sequence and then is incrementally clustered into either an appropriate existing category or a created new category. The PET technique can classify each resource into multiple categories (i.e., tags) or label it as new. While a resource is labelled as new, it will recommend a set of tags that have been used by other users and are relevant to the target user's practices. Finally, our empirical evaluation results suggest that the proposed PET technique outperforms the traditional popularity-based tag recommendation methods, while the performance rates achieved by both techniques are not satisfying.
机译:用户生成的内容量已引起信息过载的问题,并阻碍了Internet用户浏览和检索信息。社交标记,允许用户使用免费的首选关键字注释资源,以简化对其收集资源的访问。尽管社交标签使用户管理其资源受益,但是由于用户自由和自愿地分配标签,它总是遭受诸如多样化和/或未经检查的词汇以及不愿意进行标签之类的问题。标签推荐系统遵循一些标准,从标签空间中选择最相关的标签到用户的注释资源,从而将标签过程从生成到识别过程大幅度转移,以减少用户的认知工作量和时间。这项研究将个性化标签推荐作为一种增量聚类问题,并提出了一种基于渐进扩展的标签(PET)推荐技术。增量聚类假定每个对象按顺序出现,然后逐步聚类为适当的现有类别或创建的新类别。 PET技术可以将每种资源分为多个类别(即标签),也可以将其标记为新资源。当资源被标记为新资源时,它将推荐一组其他用户已使用并且与目标用户的实践有关的标签。最后,我们的经验评估结果表明,所提出的PET技术优于传统的基于流行度的标签推荐方法,而这两种技术均无法令人满意地提高性能。

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