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A Data-centric Framework for Improving Domain-specific Machine Reading Comprehension Datasets

2 April 2023
I. Bojić
Josef Halim
Verena Suharman
Sreeja Tar
Qi Chwen Ong
Duy Phung
Mathieu Ravaut
Chenyu You
Josip Car
    FedML
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Abstract

Low-quality data can cause downstream problems in high-stakes applications. Data-centric approach emphasizes on improving dataset quality to enhance model performance. High-quality datasets are needed for general-purpose Large Language Models (LLMs) training, as well as for domain-specific models, which are usually small in size as it is costly to engage a large number of domain experts for their creation. Thus, it is vital to ensure high-quality domain-specific training data. In this paper, we propose a framework for enhancing the data quality of original datasets. We applied the proposed framework to four biomedical datasets and showed relative improvement of up to 33%/40% for fine-tuning of retrieval/reader models on the BioASQ dataset when using back translation to enhance the original dataset quality.

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