Fairness in Classifying and Grouping Health Equity Information.

Autor: Ruinan JIN, Xiaoxiao LI, BLOCK, Lorraine J., BESCHASTNIKH, Ivan, CURRIE, Leanne M., RONQUILLO, Charlene E.
Zdroj: Studies in Health Technology & Informatics; 2024, Vol. 315, p368-372, 5p
Abstrakt: This paper explores the balance between fairness and performance in machine learning classification, predicting the likelihood of a patient receiving antimicrobial treatment using structured data in community nursing wound care electronic health records. The data includes two important predictors (gender and language) of the social determinants of health, which we used to evaluate the fairness of the classifiers. At the same time, the impact of various groupings of language codes on classifiers' performance and fairness is analyzed. Most common statistical learning-based classifiers are evaluated. The findings indicate that while K-Nearest Neighbors offers the best fairness metrics among different grouping settings, the performance of all classifiers is generally consistent across different language code groupings. Also, grouping more variables tends to improve the fairness metrics over all classifiers while maintaining their performance. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index