推荐系统

Dr. ML Sharma C Vinay Kumar Saini and Jai Raj Singh
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引用次数: 0

摘要

研究论文推荐人在过去十年中出现,以便于找到与研究人员感兴趣的领域相关的出版物。我们面临的挑战不仅是在任何时间、任何地点、以任何形式为研究人员提供非常丰富的出版物,而且还要以正确的方式为正确的研究人员提供正确的出版物。在处理论文推荐系统中存在几种方法。然而,这些方法假设推荐论文的全部内容都是免费获取的,由于版权限制等因素,这并不总是正确的。提出了一种基于协作的科研论文推荐系统。通过利用协同过滤方法的优势,我们利用公开可用的上下文元数据来推断研究论文之间存在的隐藏关联,以便个性化推荐。我们提出的方法的新颖之处在于,它提供个性化的推荐,而不考虑研究领域和用户的专业知识。使用公开可用的数据集,我们提出的方法在衡量整体性能和在推荐列表顶部返回相关和有用出版物的能力方面比其他基线方法有了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommendation System
Research paper recommenders emerged over the last decade to ease finding publications relating to researchers’ area of interest. The challenge was not just to provide researchers with very rich publications at any time, any place and in any form but to also offer the right publication to the right researcher in the right way. Several approaches exist in handling paper recommender systems. However, these approaches assumed the availability of the whole contents of the recommending papers to be freely accessible, which is not always true due to factors such as copyright restrictions. This paper presents a collaborative approach for research paper recommender system. By leveraging the advantages of collab- orative filtering approach, we utilize the publicly available contextual metadata to infer the hidden associations that exist between research papers in order to personalize recommen- dations. The novelty of our proposed approach is that it provides personalized recommen- dations regardless of the research field and regardless of the user’s expertise. Using a publicly available dataset, our proposed approach has recorded a significant improvement over other baseline methods in measuring both the overall performance and the ability to return relevant and useful publications at the top of the recommendation list.
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