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Using Semantic Relations between Keywords to Categorize Articles from Scientific Literature

机译:利用关键词之间的语义关系对科学文献中的文章进行分类

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The amount of digital data is growing exponentially, and it is time consuming for researchers and readers to locate relevant information. Hence, being up-to-date in a specific research field (or topic) is a tedious and complex task. Our final goal is to create an intelligent scientific search engine by taking semantic relations into account. Our approach described in this paper is the starting point of such a smart system. Semantic relations between keywords are extracted from scientific articles in order to later help in the process of browsing and searching for content in a meaningful scientific way. By computing the most correlated categories and domains inherited from the keywords, we are able to extract the correct meaning of these keywords in relation to the article's concept. Our approach achieves a precision of 0.92 for both categories and domains extraction and a recall of 0.89 and 0.96, respectively.
机译:数字数据量呈指数增长,研究人员和读者查找相关信息非常耗时。因此,在特定的研究领域(或主题)中保持最新状态是一项繁琐而复杂的任务。我们的最终目标是通过考虑语义关系来创建一个智能的科学搜索引擎。本文描述的方法是这种智能系统的起点。从科学文章中提取关键字之间的语义关系,以便以后以有意义的科学方式在浏览和搜索内容的过程中提供帮助。通过计算从关键字继承的最相关的类别和域,我们能够提取与文章概念相关的这些关键字的正确含义。我们的方法在类别和域提取方面均达到0.92的精度,召回率分别为0.89和0.96。

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