TY - CONF ID - SisLab4216 UR - https://www.micc.unifi.it/icpr2020/ A1 - Kieu, Thanh Binh A1 - Unanue, Inigo Jauregi A1 - Pham, Bao Son A1 - Phan, Xuan Hieu A1 - Piccardi, Massimo Y1 - 2020/// N2 - 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. TI - Learning Neural Textual Representations for Citation Recommendation M2 - Milan, Italy AV - none T2 - The 25th International Conference on Pattern Recognition ER -