NLP-KG
Semantic Search

Publication:

Towards Unbiased Evaluation of Detecting Unanswerable Questions in EHRSQL

Yongjin YangSihyeon KimSangmook KimGyubok LeeSe-young YunEdward Choi • @arXiv • 29 April 2024

TLDR: This work identifies a data bias in unanswerable questions in EHRSQL and proposes a simple debiasing method of adjusting the split between the validation and test sets to neutralize the undue influence of N-gram filtering.

Citations: 1
Abstract: Incorporating unanswerable questions into EHR QA systems is crucial for testing the trustworthiness of a system, as providing non-existent responses can mislead doctors in their diagnoses. The EHRSQL dataset stands out as a promising benchmark because it is the only dataset that incorporates unanswerable questions in the EHR QA system alongside practical questions. However, in this work, we identify a data bias in these unanswerable questions; they can often be discerned simply by filtering with specific N-gram patterns. Such biases jeopardize the authenticity and reliability of QA system evaluations. To tackle this problem, we propose a simple debiasing method of adjusting the split between the validation and test sets to neutralize the undue influence of N-gram filtering. By experimenting on the MIMIC-III dataset, we demonstrate both the existing data bias in EHRSQL and the effectiveness of our data split strategy in mitigating this bias.

Related Fields of Study

loading

Citations

Sort by
Previous
Next

Showing results 1 to 0 of 0

Previous
Next

References

Sort by
Previous
Next

Showing results 1 to 0 of 0

Previous
Next