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WordNet-Based Word Sense Disambiguation for Learning User Profiles

机译:用于学习用户配置文件的基于WordNet的词义消歧

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Nowadays, the amount of available information, especially on the Web and in Digital Libraries, is increasing over time. In this context, the role of user modeling and personalized information access is increasing. This paper focuses on the problem of choosing a representation of documents that can be suitable to induce concept-based user profiles as well as to support a content-based retrieval process. We propose a framework for content-based retrieval, which integrates a word sense disambiguation algorithm based on a semantic similarity measure between concepts (synsets) in the WordNet IS-A hierarchy, with a relevance feedback method to induce semantic user profiles. The document representation adopted in the framework, that we called Bag-Of-Synsets (BOS) extends and slightly improves the classic Bag-Of-Words (BOW) approach, as shown by an extensive experimental session.
机译:如今,可用信息的数量(尤其是在Web和数字图书馆中)随着时间的推移而增加。在这种情况下,用户建模和个性化信息访问的作用正在增加。本文着重于选择文档表示形式的问题,该文档适合于引入基于概念的用户配置文件并支持基于内容的检索过程。我们提出了一个基于内容的检索框架,该框架将基于WordNet IS-A层次结构中概念(同义词)之间的语义相似性度量的词义消歧算法与相关性反馈方法相结合,以诱导语义用户配置文件。框架中采用的文档表示(我们称为同义词袋(BOS))扩展并略微改进了经典的单词袋(BOW)方法,如广泛的实验会议所示。

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