论文标题
学习引用建议的神经文本表示
Learning Neural Textual Representations for Citation Recommendation
论文作者
论文摘要
随着科学文献的快速增长,手动为论文选择适当的引用变得越来越具有挑战性和耗时。虽然近年来提出了几种自动引用建议的方法,但在很大程度上,有效的引用建议的有效文档表示仍然难以捉摸。因此,在本文中,我们提出了一种新颖的引用建议方法,该方法利用了以下评分函数中用暹罗和三重态网络级联的文档(句子 - bert)的深层顺序表示。据我们所知,这是将深层表示和suppodular选择结合起来进行引用建议的第一种方法。已经使用流行的基准数据集(ACL选集网络语料库)进行了实验,并针对基准和使用MRR和F1-AT-K分数等指标进行了对基线和最先进的方法进行评估。结果表明,所提出的方法能够胜过每个测得的度量的所有比较方法。
With the rapid growth of the scientific literature, manually selecting appropriate citations for a paper is becoming increasingly challenging and time-consuming. While several approaches for automated citation recommendation have been proposed in the recent years, effective document representations for citation recommendation are still elusive to a large extent. For this reason, in this paper we propose a novel approach to citation recommendation which leverages a deep sequential representation of the documents (Sentence-BERT) cascaded with Siamese and triplet networks in a submodular scoring function. To the best of our knowledge, this is the first approach to combine deep representations and submodular selection for a task of citation recommendation. Experiments have been carried out using a popular benchmark dataset - the ACL Anthology Network corpus - and evaluated against baselines and a state-of-the-art approach using metrics such as the MRR and F1-at-k score. The results show that the proposed approach has been able to outperform all the compared approaches in every measured metric.