English

XAIQA: Explainer-Based Data Augmentation for Extractive Question Answering

Computation and Language 2023-12-07 v1

Abstract

Extractive question answering (QA) systems can enable physicians and researchers to query medical records, a foundational capability for designing clinical studies and understanding patient medical history. However, building these systems typically requires expert-annotated QA pairs. Large language models (LLMs), which can perform extractive QA, depend on high quality data in their prompts, specialized for the application domain. We introduce a novel approach, XAIQA, for generating synthetic QA pairs at scale from data naturally available in electronic health records. Our method uses the idea of a classification model explainer to generate questions and answers about medical concepts corresponding to medical codes. In an expert evaluation with two physicians, our method identifies 2.2×2.2\times more semantic matches and 3.8×3.8\times more clinical abbreviations than two popular approaches that use sentence transformers to create QA pairs. In an ML evaluation, adding our QA pairs improves performance of GPT-4 as an extractive QA model, including on difficult questions. In both the expert and ML evaluations, we examine trade-offs between our method and sentence transformers for QA pair generation depending on question difficulty.

Keywords

Cite

@article{arxiv.2312.03567,
  title  = {XAIQA: Explainer-Based Data Augmentation for Extractive Question Answering},
  author = {Joel Stremmel and Ardavan Saeedi and Hamid Hassanzadeh and Sanjit Batra and Jeffrey Hertzberg and Jaime Murillo and Eran Halperin},
  journal= {arXiv preprint arXiv:2312.03567},
  year   = {2023}
}

Comments

Extended Abstract presented at Machine Learning for Health (ML4H) symposium 2023, December 10th, 2023, New Orleans, United States, 8 pages

R2 v1 2026-06-28T13:42:55.747Z