C-Rex: A Comprehensive System for Recommending In-Text Citations with Explanations

Michael Färber, Vinzenz Zinecker, Isabela Bragaglia Cartus, S. Celis, Maria Duma
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引用次数: 1

Abstract

Finding suitable citations for scientific publications can be challenging and time-consuming. To this end, context-aware citation recommendation approaches that recommend publications as candidates for in-text citations have been developed. In this paper, we present C-Rex, a web-based demonstration system available at http://c-rex.org for context-aware citation recommendation based on the Neural Citation Network [5] and millions of publications from the Microsoft Academic Graph. Our system is one of the first online context-aware citation recommendation systems and the first to incorporate not only a deep learning recommendation approach, but also explanation components to help users better understand why papers were recommended. In our offline evaluation, our model performs similarly to the one presented in the original paper and can serve as a basic framework for further implementations. In our online evaluation, we found that the explanations of recommendations increased users’ satisfaction.
C-Rex:一个综合的推荐文本引用和解释系统
为科学出版物寻找合适的引文既具有挑战性又耗时。为此,已经开发了上下文感知的引文推荐方法,将出版物推荐为文本引用的候选人。在本文中,我们介绍了C-Rex,这是一个基于web的演示系统,可在http://c-rex.org上获得,用于基于神经引文网络[5]和来自微软学术图的数百万出版物的上下文感知引文推荐。我们的系统是第一个在线上下文感知引文推荐系统之一,也是第一个不仅采用深度学习推荐方法,而且还包含解释组件以帮助用户更好地理解论文被推荐的原因的系统。在我们的离线评估中,我们的模型的执行类似于原始论文中提出的模型,并且可以作为进一步实现的基本框架。在我们的在线评估中,我们发现推荐的解释提高了用户的满意度。
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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