CHEMMA: Explainable Hydrochemical Endmember Modeling
CHEMMA applies explainable AI, SHAP analysis, and information-theoretic metrics to determine how a reduced chemical suite affects endmember mixing estimates, balancing parsimony against interpretability and scientific rigor.
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