paht_nlp @ MEDIQA 2021: Multi-grained Query Focused Multi-Answer Summarization

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Abstract

In this article, we describe our systems for the MEDIQA 2021 Shared Tasks. First, we will describe our method for the second task, Multi-Answer Summarization (MAS). For extractive summarization, two series of methods are applied. The first one follows Xu and Lapata (2020). First a RoBERTa model is first applied to give a local ranking of the candidate sentences. Then a Markov Chain model is applied to evaluate the sentences globally. The second method applies cross-sentence contextualization to improve the local ranking and discard the global ranking step. Our methods achieve the 1st Place in the MAS task. For the question summarization (QS) and radiology report summarization (RRS) tasks, we explore how end-to-end pre-trained seq2seq model perform. A series of tricks for improving the fine-tuning performances are validated.

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Zhu, W., He, Y., Chai, L., Fan, Y., Ni, Y., Xie, G., & Wang, X. (2021). paht_nlp @ MEDIQA 2021: Multi-grained Query Focused Multi-Answer Summarization. In Proceedings of the 20th Workshop on Biomedical Language Processing, BioNLP 2021 (pp. 96–102). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2021.bionlp-1.10

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