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Analyzing the Semantic Relatedness of Paper Abstracts: An Application to the Educational Research Field

机译:分析纸张摘要的语义相关性:教育研究领域的应用

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Each domain, along with its knowledge base, changes over time and every timeframe is centered on specific topics that emerge from different ongoing research projects. As searching for relevant resources is a time-consuming process, the automatic extraction of the most important and relevant articles from a domain becomes essential in supporting researchers in their day-to-day activities. The proposed analysis extends other previous researches focused on extracting co-citations between the papers, with the purpose of comparing their overall importance within the domain from a semantic perspective. Our method focuses on the semantic analysis of paper abstracts by using Natural Language Processing (NLP) techniques such as Latent Semantic Analysis, Latent Dirichlet Allocation or specific ontology distances, i.e., Word Net. Moreover, the defined mechanisms are enforced on two different sub domains from the corpora generated around the keywords "e-learning" and "computer". Graph visual representations are used to highlight the keywords of each sub domain, links among concepts and between articles, as well as specific document similarity views, or scores reflecting the keyword-abstract overlaps. In the end, conclusions and future improvements are presented, emphasizing nevertheless the key elements of our research support framework.
机译:每个域名,以及其知识库,随着时间的变化,每个时间帧都是以不同的正在进行的研究项目出现的特定主题为中心。在寻找相关资源是一个耗时的过程中,从域中的最重要和相关文章的自动提取对于支持他们日常活动的研究人员来说至关重要。该拟议的分析扩展了以前的其他研究,重点是在论文之间提取共同引用,目的是从语义角度比较域内的整体重要性。我们的方法通过使用自然语言处理(NLP)技术,诸如潜在语义分析,潜在的Dirichlet分配或特定本体距离,即Word Net的方法来侧重于纸摘录的语义分析。此外,所定义的机制在来自关键字“电子学习”和“计算机”周围生成的Corpora的两个不同的子域上强制执行。图表视觉表示用于突出显示每个子域的关键字,概念之间的关键字,以及文章之间的链接,以及特定的文档相似度视图,或反映关键字抽象重叠的分数。最后,提出了结论和未来的改进,仍强调了我们研究支持框架的关键要素。

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