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Academic paper recommender system using multilevel simultaneous citation networks

机译:使用多级同时引用网络的学术论文推荐系统

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Researchers typically need to filter several academic papers to find those relevant to their research. This filtering is cumbersome and time-consuming because the number of published academic papers is growing exponentially. Some researchers have focused on developing better recommender systems for academic papers by using citation analysis and content analysis. Most traditional content analysis is implemented using a keyword matching process, and thus it cannot consider the semantic contexts of items. Further, citation analysis-based techniques rely on the number of links directly citing or being cited in a single-level network. Consequently, it may be difficult to recommend the appropriate papers when the paper of interest does not have enough citation information. To address these problems, we propose a recommendation system for academic papers that combines citation analysis and network analysis. The proposed method is based on multilevel citation networks that compare all the indirectly linked papers to the paper of interest to inspect the structural and semantic relationships among them. Thus, the proposed method tends to recommend informative and useful papers related to both the research topic and the academic theory. The comparison results based on real data showed that the proposed method outperformed the Google Scholar and SCOPUS algorithms. (C) 2017 Elsevier B.V. All tights reserved.
机译:研究人员通常需要过滤几篇学术论文才能找到与他们的研究相关的论文。这种过滤既麻烦又费时,因为已发表的学术论文数量呈指数增长。一些研究人员致力于通过使用引文分析和内容分析为学术论文开发更好的推荐系统。大多数传统的内容分析都是使用关键字匹配过程实现的,因此无法考虑项目的语义上下文。此外,基于引用分析的技术依赖于直接引用或在单级网络中被引用的链接的数量。因此,当感兴趣的论文没有足够的引用信息时,可能很难推荐合适的论文。为了解决这些问题,我们为学术论文提出了一个推荐系统,该系统将引用分析和网络分析相结合。所提出的方法基于多级引用网络,该网络将所有间接链接的论文与感兴趣的论文进行比较,以检查它们之间的结构和语义关系。因此,所提出的方法倾向于推荐与研究主题和学术理论相关的信息丰富且有用的论文。基于真实数据的比较结果表明,该方法优于Google Scholar和SCOPUS算法。 (C)2017 Elsevier B.V.版权所有。

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