@inproceedings{adegoke-etal-2025-medical,
title = "Medical Item Difficulty Prediction Using Machine Learning",
author = "Adegoke, Hope Oluwaseun and
Du, Ying and
Dwyer, Andrew",
editor = "Wilson, Joshua and
Ormerod, Christopher and
Beiting Parrish, Magdalen",
booktitle = "Proceedings of the Artificial Intelligence in Measurement and Education Conference (AIME-Con): Works in Progress",
month = oct,
year = "2025",
address = "Wyndham Grand Pittsburgh, Downtown, Pittsburgh, Pennsylvania, United States",
publisher = "National Council on Measurement in Education (NCME)",
url = "https://preview.aclanthology.org/name-variant-enfa-fane/2025.aimecon-wip.22/",
pages = "185--190",
ISBN = "979-8-218-84229-1",
abstract = "This project aims to use machine learning models to predict a medical exam item difficulty by combining item metadata, linguistic features, word embeddings, and semantic similarity measures with a sample size of 1000 items. The goal is to improve the accuracy of difficulty prediction in medical assessment."
}Markdown (Informal)
[Medical Item Difficulty Prediction Using Machine Learning](https://preview.aclanthology.org/name-variant-enfa-fane/2025.aimecon-wip.22/) (Adegoke et al., AIME-Con 2025)
ACL
- Hope Oluwaseun Adegoke, Ying Du, and Andrew Dwyer. 2025. Medical Item Difficulty Prediction Using Machine Learning. In Proceedings of the Artificial Intelligence in Measurement and Education Conference (AIME-Con): Works in Progress, pages 185–190, Wyndham Grand Pittsburgh, Downtown, Pittsburgh, Pennsylvania, United States. National Council on Measurement in Education (NCME).