TL;DR
BioADAPT-MRC introduces an adversarial domain adaptation framework that enhances biomedical machine reading comprehension by effectively transferring knowledge from general-purpose datasets without requiring biomedical annotations.
Contribution
The paper proposes a novel adversarial learning-based domain adaptation method for biomedical-MRC that outperforms existing approaches without using biomedical labeled data.
Findings
Achieves state-of-the-art results on three biomedical-MRC benchmarks.
Does not require synthetic or human-annotated biomedical data.
Effectively bridges distribution gaps between general and biomedical domains.
Abstract
Biomedical machine reading comprehension (biomedical-MRC) aims to comprehend complex biomedical narratives and assist healthcare professionals in retrieving information from them. The high performance of modern neural network-based MRC systems depends on high-quality, large-scale, human-annotated training datasets. In the biomedical domain, a crucial challenge in creating such datasets is the requirement for domain knowledge, inducing the scarcity of labeled data and the need for transfer learning from the labeled general-purpose (source) domain to the biomedical (target) domain. However, there is a discrepancy in marginal distributions between the general-purpose and biomedical domains due to the variances in topics. Therefore, direct-transferring of learned representations from a model trained on a general-purpose domain to the biomedical domain can hurt the model's performance. We…
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