%0 Conference Proceedings %T NLM at MEDIQA 2021: Transfer Learning-based Approaches for Consumer Question and Multi-Answer Summarization %A Yadav, Shweta %A Sarrouti, Mourad %A Gupta, Deepak %Y Demner-Fushman, Dina %Y Cohen, Kevin Bretonnel %Y Ananiadou, Sophia %Y Tsujii, Junichi %S Proceedings of the 20th Workshop on Biomedical Language Processing %D 2021 %8 June %I Association for Computational Linguistics %C Online %F yadav-etal-2021-nlm %X The quest for seeking health information has swamped the web with consumers’ healthrelated questions, which makes the need for efficient and reliable question answering systems more pressing. The consumers’ questions, however, are very descriptive and contain several peripheral information (like patient’s medical history, demographic information, etc.), that are often not required for answering the question. Furthermore, it contributes to the challenges of understanding natural language questions for automatic answer retrieval. Also, it is crucial to provide the consumers with the exact and relevant answers, rather than the entire pool of answer documents to their question. One of the cardinal tasks in achieving robust consumer health question answering systems is the question summarization and multi-document answer summarization. This paper describes the participation of the U.S. National Library of Medicine (NLM) in Consumer Question and Multi-Answer Summarization tasks of the MEDIQA 2021 challenge at NAACL-BioNLP workshop. In this work, we exploited the capabilities of pre-trained transformer models and introduced a transfer learning approach for the abstractive Question Summarization and extractive Multi-Answer Summarization tasks by first pre-training our model on a task-specific summarization dataset followed by fine-tuning it for both the tasks via incorporating medical entities. We achieved the second, sixth and the fourth position for the Question Summarization task in terms ROUGE-1, ROUGE-2 and ROUGE-L scores respectively. %R 10.18653/v1/2021.bionlp-1.34 %U https://aclanthology.org/2021.bionlp-1.34 %U https://doi.org/10.18653/v1/2021.bionlp-1.34 %P 291-301