论文标题

科学论文建议:调查

Scientific Paper Recommendation: A Survey

论文作者

Bai, Xiaomei, Wang, Mengyang, Lee, Ivan, Yang, Zhuo, Kong, Xiangjie, Xia, Feng

论文摘要

在全球范围内,推荐服务变得很重要,因为它们支持电子商务应用程序和不同的研究社区。推荐系统在许多领域都有大量应用,包括经济,教育和科学研究。不同的经验研究表明,与基于关键字的搜索引擎相比,推荐系统更有效,更可靠,用于从大量数据中提取有用的知识。在科学界推荐类似科学文章的问题称为科学论文建议。科学论文的建议旨在推荐与研究人员兴趣相匹配的新文章或古典文章。由于学术论文的数量成倍增加,因此它已成为一个有吸引力的研究领域。在这项调查中,我们首先介绍了纸张推荐系统的重要性和优势。其次,我们回顾了建议算法和方法,例如基于内容的方法,协作过滤方法,基于图形的方法和混合方法。然后,我们介绍了不同推荐系统的评估方法。最后,我们总结了论文推荐系统中的开放问题,包括冷启动,稀疏性,可伸缩性,隐私,偶然性和统一的学术数据标准。这项调查的目的是对学术论文建议进行全面的评论。

Globally, recommendation services have become important due to the fact that they support e-commerce applications and different research communities. Recommender systems have a large number of applications in many fields including economic, education, and scientific research. Different empirical studies have shown that recommender systems are more effective and reliable than keyword-based search engines for extracting useful knowledge from massive amounts of data. The problem of recommending similar scientific articles in scientific community is called scientific paper recommendation. Scientific paper recommendation aims to recommend new articles or classical articles that match researchers' interests. It has become an attractive area of study since the number of scholarly papers increases exponentially. In this survey, we first introduce the importance and advantages of paper recommender systems. Second, we review the recommendation algorithms and methods, such as Content-Based methods, Collaborative Filtering methods, Graph-Based methods and Hybrid methods. Then, we introduce the evaluation methods of different recommender systems. Finally, we summarize open issues in the paper recommender systems, including cold start, sparsity, scalability, privacy, serendipity and unified scholarly data standards. The purpose of this survey is to provide comprehensive reviews on scholarly paper recommendation.

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