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Retrieval of Relevant Concepts from a Text Collection

机译:从文本集中检索相关概念

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This paper addresses the characterization of a large text collection by introducing a method for retrieving sets of relevant WordNet concepts as descriptors of the collection contents. The method combines models for identifying interesting word co-occurrences with an extension of a word sense disambiguation algorithm in order to retrieve the concepts that better fit in with the collection topics. Multi-word nominal concepts that do not explicitly appear in the texts, can be found among the retrieved concepts. We evaluate our proposal using extensions of recall and precision that are also introduced in this paper.
机译:本文通过介绍一种检索有关WordNet概念集作为集合内容描述符的方法来解决大型文本集合的特征。该方法将用于识别有趣的单词共现的模型与单词义消歧算法的扩展相结合,以便检索更适合于集合主题的概念。在检索到的概念中可以找到未明确出现在文本中的多词名义概念。我们使用召回率和精度的扩展来评估我们的建议,本文也对此进行了介绍。

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