CliniQG4QA: Generating Diverse Questions for Domain Adaptation of
Clinical Question Answering
- URL: http://arxiv.org/abs/2010.16021v3
- Date: Sat, 11 Dec 2021 15:01:48 GMT
- Title: CliniQG4QA: Generating Diverse Questions for Domain Adaptation of
Clinical Question Answering
- Authors: Xiang Yue and Xinliang Frederick Zhang and Ziyu Yao and Simon Lin and
Huan Sun
- Abstract summary: Clinical question answering (QA) aims to automatically answer questions from medical professionals based on clinical texts.
We propose CliniQG4QA, which leverages question generation (QG) to synthesize QA pairs on new clinical contexts.
In order to generate diverse types of questions that are essential for training QA models, we introduce a seq2seq-based question phrase prediction (QPP) module.
- Score: 27.45623324582005
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Clinical question answering (QA) aims to automatically answer questions from
medical professionals based on clinical texts. Studies show that neural QA
models trained on one corpus may not generalize well to new clinical texts from
a different institute or a different patient group, where large-scale QA pairs
are not readily available for model retraining. To address this challenge, we
propose a simple yet effective framework, CliniQG4QA, which leverages question
generation (QG) to synthesize QA pairs on new clinical contexts and boosts QA
models without requiring manual annotations. In order to generate diverse types
of questions that are essential for training QA models, we further introduce a
seq2seq-based question phrase prediction (QPP) module that can be used together
with most existing QG models to diversify the generation. Our comprehensive
experiment results show that the QA corpus generated by our framework can
improve QA models on the new contexts (up to 8% absolute gain in terms of Exact
Match), and that the QPP module plays a crucial role in achieving the gain.
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