CLApr 15, 2021

Sequence tagging for biomedical extractive question answering

arXiv:2104.07535v231 citationsHas Code
AI Analysis

This addresses the need for models that can handle multiple-answer questions in the biomedical domain, representing an incremental improvement over single-span methods.

The authors tackled the problem of biomedical extractive question answering (BioEQA) by proposing a sequence tagging approach for multi-span extraction, as biomedical questions often require list-type answers with multiple spans, and their method outperformed existing models on BioASQ datasets without post-processing.

Current studies in extractive question answering (EQA) have modeled the single-span extraction setting, where a single answer span is a label to predict for a given question-passage pair. This setting is natural for general domain EQA as the majority of the questions in the general domain can be answered with a single span. Following general domain EQA models, current biomedical EQA (BioEQA) models utilize the single-span extraction setting with post-processing steps. In this article, we investigate the question distribution across the general and biomedical domains and discover biomedical questions are more likely to require list-type answers (multiple answers) than factoid-type answers (single answer). This necessitates the models capable of producing multiple answers for a question. Based on this preliminary study, we propose a sequence tagging approach for BioEQA, which is a multi-span extraction setting. Our approach directly tackles questions with a variable number of phrases as their answer and can learn to decide the number of answers for a question from training data. Our experimental results on the BioASQ 7b and 8b list-type questions outperformed the best-performing existing models without requiring post-processing steps. Source codes and resources are freely available for download at https://github.com/dmis-lab/SeqTagQA

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