基于本体的语义扩展研究阿拉伯语学术网络中的社区检测

Sarah Al-Shareef, Rahaf Alharbi, Rawan Alharbi, Raghad Almfarriji, Maram Alsharif, Rasha Alharthi, Lamia Althaqafi
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引用次数: 1

摘要

将研究人员聚集在社区中是一项重要的任务,它支持一系列分析和理解研究环境的技术,并帮助研究人员找到在相同领域感兴趣的人进行合作。在计算机科学中,本体通常用于使用相关概念和关系来获取有关特定领域的知识。本研究探讨了在多层阿拉伯学术网络上使用重叠社区检测算法来检测共享研究兴趣的研究人员社区。如果两名研究人员共同撰写了一篇论文,或者在他们的论文中分享了一些关键词,他们就可以分享相同的兴趣。通过跨领域本体(如DBpedia)的语义搜索扩展关键字集,使更多具有间接关系的研究人员能够连接起来。通过检索乌姆阿尔库拉大学(UQU)三个学院的教职员工的学术数据和丰富的阿拉伯语出版物,构建了一个二层学术网络。测试了该网络的四个版本:未加权、加权、语义扩展和减少语义扩展。本研究发现,权重对社区检测的影响不显著。此外,语义扩展的网络确实具有更好的聚类潜力,但前提是有选择地进行。否则,扩展后的网络可能会受到通用和非判别性关键字的影响,从而使社区检测任务更具挑战性。据我们所知,这是第一次在阿拉伯学术网络中检测社区的调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating Community Detection in Arabic Scholarly Network Using Ontology-based Semantic Expansion
Clustering researchers in communities is an important task to support a range of techniques for analyzing and making sense of the research environment and helps re-searchers find people in the same field of interest to collaborate. In computer science, ontology is commonly used to capture knowledge about a particular area using relevant concepts and relations. This study investigates the use of overlapping community detection algorithms on a multilayered Arabic scholarly network to detect communities of researchers who share their research interests. Two researchers can share an interest if they co-authored a publication or share some keywords in their publications. The set of keywords is expanded via semantic search within a cross-domain ontology, e.g. DBpedia, allowing more researchers with indirect relationships to be connected. A 2-layer scholarly network was constructed by retrieving the scholarly data of faculty members from three colleges at Umm AlQura University (UQU) with rich Arabic publications. Four versions of this network were tested: unweighted, weighted, semantically expanded, and reduced semantically expanded. It was found that weights have an insignificant role in community detection within this study. In addition, a semantically expanded network does have better clustering potentials but only if was performed selectively. Otherwise, the expanded network might suffer from generic and non-discriminative keywords, making the community detection task more challenging. To our knowledge, this is the first investigation into detecting communities within an Arabic scholarly network.
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