chenggoj/iGAM-MSI
iGAM-MSI is a repository containing code and trained machine learning models for studying Metal-Support Interactions (MSI) using Interpretable Generalized Additive Models (iGAM). This project leverages the power of iGAM to provide accurate and explainable predictions in materials science. The published work DOI associated with the codes is:
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Sep 28, 2025
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