Visualizing Feature-based Similarity for Research Paper Recommendation

Corinna Breitinger, Harald Reiterer
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引用次数: 0

Abstract

Research paper recommender systems are widely used by academics to discover and explore the most relevant publications on a topic. While existing recommendation interfaces present researchers with a ranked list of publications based on a global relevance score, they fail to visualize the full range of non-textual features uniquely present in academic publications: citations, figures, charts, or images, and mathematical formulae or expressions. Especially for STEM literature, examining such non-textual features efficiently can provide utility to researchers interested in answering specialized research questions or information needs. If research paper search and recommender systems are to consider the similarity of such features as one facet of a content-based similarity assessment for academic literature, new methods for visualizing these non-textual features are needed. In this paper, we review the state-of-the-art in visualizing feature-based similarity in documents. We subsequently propose a set of user-customizable visualization approaches tailored to STEM literature and the research paper recommendation context. Results from a study with 10 expert users show that the interactive visualization interface we propose for the exploration of non-textual features in publications can effectively address specialized information retrieval tasks, which cannot be addressed by existing research paper search or recommendation interfaces.
基于特征的研究论文推荐相似度可视化
研究论文推荐系统被学术界广泛用于发现和探索与某个主题最相关的出版物。虽然现有的推荐界面为研究人员提供了基于全局相关性评分的出版物排名列表,但它们无法可视化学术出版物中唯一存在的非文本特征的全部范围:引文、数字、图表或图像以及数学公式或表达式。特别是对于STEM文献,有效地检查这些非文本特征可以为有兴趣回答专业研究问题或信息需求的研究人员提供实用工具。如果研究论文搜索和推荐系统要考虑这些特征的相似性作为基于内容的学术文献相似性评估的一个方面,则需要将这些非文本特征可视化的新方法。在本文中,我们回顾了在可视化文档中基于特征的相似性方面的最新进展。随后,我们提出了一套针对STEM文献和研究论文推荐上下文定制的用户可定制的可视化方法。对10个专家用户的研究结果表明,我们提出的用于探索出版物非文本特征的交互式可视化界面可以有效地解决现有研究论文搜索或推荐界面无法解决的专业信息检索任务。
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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