作者
Fiza Gulzar Hussain, Muhammad Wasim, Sehrish Munawar Cheema, Ivan Miguel Pires
发表日期
2024/4/25
期刊
Knowledge and Information Systems
页码范围
1-17
出版商
Springer London
简介
Lexical answer type prediction is integral to biomedical question–answering systems. LAT prediction aims to predict the expected answer’s semantic type of a factoid or list-type biomedical question. It also aids in the answer processing stage of a QA system to assign a high score to the most relevant answers. Although considerable research efforts exist for LAT prediction in diverse domains, it remains a challenging biomedical problem. LAT prediction for the biomedical field is a multi-label classification problem, as one biomedical question might have more than one expected answer type. Achieving high performance on this task is challenging as biomedical questions have limited lexical features. One biomedical question must be assigned multiple labels given these limited lexical features. In this paper, we develop a novel feature set (lexical, noun concepts, verb concepts, protein–protein interactions, and …
学术搜索中的文章
FG Hussain, M Wasim, SM Cheema, IM Pires - Knowledge and Information Systems, 2024