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Growing a Tree in the Forest: Constructing Folksonomies by Integrating Structured Metadata

机译:在森林中种树:通过整合结构化元数据来构建民间分类法

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Many social Web sites allow users to annotate the content with descriptive metadata, such as tags, and more recently to organize content hierarchically. These types of structured metadata provide valuable evidence for learning how a community organizes knowledge. For instance, we can aggregate many personal hierarchies into a common taxonomy, also known as a folksonomy, that will aid users in visualizing and browsing social content, and also to help them in organizing their own content. However, learning from social metadata presents several challenges, since it is sparse, shallow, ambiguous, noisy, and inconsistent. We describe an approach to folksonomy learning based on relational clustering, which exploits structured metadata contained in personal hierarchies. Our approach clusters similar hierarchies using their structure and tag statistics, then incrementally weaves them into a deeper, bushier tree. We study folksonomy learning using social metadata extracted from the photo-sharing site Flickr, and demonstrate that the proposed approach addresses the challenges. Moreover, comparing to previous work, the approach produces larger, more accurate folksonomies, and in addition, scales better.
机译:许多社交网站允许用户向具有描述性元数据的内容注释,例如标记,以及最近更自体地组织内容。这些类型的结构化元数据提供了学习社区如何组织知识的宝贵证据。例如,我们可以将许多个人层次结构聚合到常见的分类系统中,也称为愚蠢的分类系统,这将帮助用户可视化和浏览社交内容,并帮助他们组织自己的内容。然而,从社会元数据学习一些挑战,因为它是稀疏,浅薄,暧昧,嘈杂和不一致的。我们描述了一种基于关系聚类的愚蠢学习方法,该方法利用个人层次结构中包含的结构化元数据。我们的方法使用它们的结构和标签统计群体群化类似的层次结构,然后将它们逐渐缩小到更深层次的树丛中。我们研究了使用从照片共享站点Flickr中提取的社交元数据学习的愚蠢学习,并证明所提出的方法解决了挑战。此外,与以前的工作相比,该方法产生较大,更准确的人体语文体,此外,更好地缩放。

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