A graph based approach to scientific paper recommendation

M. Amami, R. Faiz, Fabio Stella, G. Pasi
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引用次数: 34

Abstract

When looking for recently published scientific papers, a researcher usually focuses on the topics related to her/his scientific interests. The task of a recommender system is to provide a list of unseen papers that match these topics. The core idea of this paper is to leverage the latent topics of interest in the publications of the researchers, and to take advantage of the social structure of the researchers (relations among researchers in the same field) as reliable sources of knowledge to improve the recommendation effectiveness. In particular, we introduce a hybrid approach to the task of scientific papers recommendation, which combines content analysis based on probabilistic topic modeling and ideas from collaborative filtering based on a relevance-based language model. We conducted an experimental study on DBLP, which demonstrates that our approach is promising.
基于图的科学论文推荐方法
在寻找最近发表的科学论文时,研究人员通常会关注与他/她的科学兴趣相关的主题。推荐系统的任务是提供与这些主题匹配的未见过的论文列表。本文的核心思想是利用研究人员发表的潜在感兴趣的话题,利用研究人员的社会结构(同一领域的研究人员之间的关系)作为可靠的知识来源来提高推荐的有效性。特别地,我们引入了一种混合方法来完成科学论文推荐任务,该方法结合了基于概率主题建模的内容分析和基于基于相关性的语言模型的协同过滤思想。我们对DBLP进行了实验研究,结果表明我们的方法是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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