Machine learning and deep learning models are pivotal in educational contexts, particularly in predicting student success. Despite their widespread application, a significant gap persists in comprehending the factors influencing these models' predictions, especially in explainability within education. This work addresses this gap by employing nine distinct explanation methods and conducting a comprehensive analysis to explore the correlation between the agreement among these methods in generating explanations and the predictive model's performance. Applying Spearman's correlation, our findings reveal a very strong correlation between the model's performance and the agreement level observed among the explanation methods.
@article{arxiv.2405.13957,
title = {Exploring the Relationship Between Feature Attribution Methods and Model Performance},
author = {Priscylla Silva and Claudio T. Silva and Luis Gustavo Nonato},
journal= {arXiv preprint arXiv:2405.13957},
year = {2024}
}
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AAAI2024 Workshop on AI for Education - Bridging Innovation and Responsibility