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Using author-specified keywords in building an initial reading list of research papers in scientific paper retrieval and recommender systems

机译:在科学论文检索和推荐系统中,使用作者指定的关键字构建研究论文的初始阅读清单

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An initial reading list is prepared by researchers at the start of literature review for getting an overview of the research performed in a particular area. Prior studies have taken the approach of merely recommending seminal or popular papers to aid researchers in such a task. In this paper, we present an alternative technique called the AKR (Author-specified Keywords based Retrieval) technique for providing popular, recent, survey and a diverse set of papers as a part of the initial reading list. The AKR technique is based on a novel coverage value that has its calculation centered on author-specified keywords. We performed an offline evaluation experiment with four variants of the AKR technique along with three state-of-the-art approaches involving collaborative filtering and graph ranking algorithms. Findings show that the Hyperlink-Induced Topic Search (HITS) enhanced variant of the AKR technique performs better than other techniques, satisfying most requirements for a reading list. A user evaluation study was conducted with 132 researchers to gauge user interest on the proposed technique using 14 evaluation measures. Results show that (ⅰ) students group are more satisfied with the recommended papers than staff group, (ⅱ) popularity measure is strongly correlated with the output quality measures and (ⅲ) the measures familiarity, usefulness and 'agreeability on a good list' were found to be strong predictors for user satisfaction. The AKR technique provides scope for extension in future information retrieval (IR) and content-based recommender systems (RS) studies.
机译:研究人员在进行文献综述时会准备一份初步阅读清单,以概述在特定领域进行的研究。先前的研究仅采用推荐开创性或流行论文的方法来帮助研究人员完成这一任务。在本文中,我们提出了一种替代技术,称为AKR(基于作者指定关键字的检索)技术,该技术提供了流行的,近期的,调查的以及各种各样的论文作为初始阅读清单的一部分。 AKR技术基于一种新颖的覆盖率值,其计算以作者指定的关键字为中心。我们使用AKR技术的四个变体以及涉及协作过滤和图形排名算法的三种最新方法进行了离线评估实验。研究结果表明,AKR技术的超链接诱导主题搜索(HITS)增强变体的性能优于其他技术,可以满足阅读列表的大多数要求。与132名研究人员进行了用户评估研究,以使用14种评估方法来评估用户对所提出技术的兴趣。结果表明:(ⅰ)学生组对推荐论文的满意度高于对职员的评价;(ⅱ)受欢迎程度与产出质量的衡量标准密切相关;(ⅲ)衡量标准的熟悉程度,有用性和“良好名单上的同意程度”分别为被发现是用户满意度的有力预测指标。 AKR技术为将来的信息检索(IR)和基于内容的推荐系统(RS)研究提供了扩展范围。

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