Journal ArticleOpen Access
A Comparative Analysis of LIME and SHAP Interpreters With Explainable ML-Based Diabetes Predictions
Author Affiliations
Jahangirnagar University, University of Chittagong, Luleå University of Technology
Published InIEEE Access
Year2024
Citations113
Abstract
Explainable artificial intelligence is beneficial in converting opaque machine learning models into transparent ones and outlining how each one makes decisions in the healthcare industry. To comprehend the variables that affect decision-making regarding diabetes prediction that can be accounted for by model-agnostic techniques. In this project, we investigate how to generate local and global explanations for a machine-learning model built on a logistic regression architecture. We trained on 253,680 survey responses from diabetes patients using the explainable AI techniques LIME and SHAP. LIME and SHAP were then used to explain the predictions produced by the logistic regression and Random forest-based model on the validation and test sets.With a discussion of future work, the comparative analysis and discussion of various experimental…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.