User Modeling in Folksonomies: Relational Clustering and Tag Weighting

Takuya Kitazawa, M. Sugiyama
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Abstract

This paper proposes a user-modeling method for folksonomic data. Since data mining of folksonomic data is difficult due to their complexity, significant amounts of preprocessing are usually required. To catch sketchy characteristics of such complex data, our method employs two steps: (1) using the infinite relational model (IRM) to perform relational clustering of a folksonomic data set, and (2) using tag-weighting to extract the characteristics of each user cluster. As an experimental evaluation, we applied our method to real-world data from one of the most popular social bookmarking services in Japan. Our user-modeling method successfully extracted semantically clustered user models, thus demonstrating that relational data analysis has promise for mining folksonomic data. In addition, we developed the user-model-based filtering algorithm (UMF), which evaluates the user models by their resource recommendations. The F-measure was higher than that of random recommendation, and the running time was much shorter than that of collaborative-filtering-based top-n recommendation.
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大众分类法中的用户建模:关系聚类和标签加权
本文提出了一种民俗学数据的用户建模方法。由于民俗学数据的复杂性,其数据挖掘是困难的,通常需要大量的预处理。为了捕捉这些复杂数据的大致特征,我们的方法采用了两个步骤:(1)使用无限关系模型(IRM)对民俗数据集进行关系聚类,(2)使用标签加权提取每个用户聚类的特征。作为一项实验性评估,我们将我们的方法应用于来自日本最受欢迎的社交书签服务之一的真实数据。我们的用户建模方法成功地提取了语义聚类的用户模型,从而证明了关系数据分析在挖掘民俗数据方面的前景。此外,我们开发了基于用户模型的过滤算法(UMF),该算法通过用户模型的资源推荐来评估用户模型。f值高于随机推荐,运行时间远短于基于协同过滤的top-n推荐。
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