Navigation-Based Candidate Expansion and Pretrained Language Models for Citation Recommendation

January 23, 2020 Β· Declared Dead Β· πŸ› Scientometrics

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Authors Rodrigo Nogueira, Zhiying Jiang, Kyunghyun Cho, Jimmy Lin arXiv ID 2001.08687 Category cs.IR: Information Retrieval Cross-listed cs.DL Citations 21 Venue Scientometrics Last Checked 4 months ago
Abstract
Citation recommendation systems for the scientific literature, to help authors find papers that should be cited, have the potential to speed up discoveries and uncover new routes for scientific exploration. We treat this task as a ranking problem, which we tackle with a two-stage approach: candidate generation followed by re-ranking. Within this framework, we adapt to the scientific domain a proven combination based on "bag of words" retrieval followed by re-scoring with a BERT model. We experimentally show the effects of domain adaptation, both in terms of pretraining on in-domain data and exploiting in-domain vocabulary. In addition, we introduce a novel navigation-based document expansion strategy to enrich the candidate documents processed by our neural models. On three different collections from different scientific disciplines, we achieve the best-reported results in the citation recommendation task.
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