Tell Me How to Survey: Literature Review Made Simple with Automatic Reading Path Generation
Jiayuan Ding, Tong Xiang, Zijing Ou, Wangyang Zuo, Ruihui Zhao,, Chenghua Lin, Yefeng Zheng, Bang Liu

TL;DR
This paper introduces Reading Path Generation (RPG), a new task for automatically creating research paper reading sequences, supported by a large dataset and a graph-based method that outperforms baselines.
Contribution
It presents the first approach to generate research reading paths automatically, along with a new dataset and a graph-optimization method for improved path quality.
Findings
Our method outperforms baseline models in generating accurate reading paths.
SurveyBank dataset provides a valuable resource for research path generation tasks.
RePaGer system demonstrates real-time reading path generation capabilities.
Abstract
Recent years have witnessed the dramatic growth of paper volumes with plenty of new research papers published every day, especially in the area of computer science. How to glean papers worth reading from the massive literature to do a quick survey or keep up with the latest advancement about a specific research topic has become a challenging task. Existing academic search engines such as Google Scholar return relevant papers by individually calculating the relevance between each paper and query. However, such systems usually omit the prerequisite chains of a research topic and cannot form a meaningful reading path. In this paper, we introduce a new task named Reading Path Generation (RPG) which aims at automatically producing a path of papers to read for a given query. To serve as a research benchmark, we further propose SurveyBank, a dataset consisting of large quantities of survey…
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Taxonomy
TopicsWikis in Education and Collaboration · Natural Language Processing Techniques · Web Data Mining and Analysis
