An interpretable XGBoost-SHAP machine learning model for reliable prediction of mechanical properties in waste foundry sand-based eco-friendly concrete

Meysam Alizamir, Mo Wang, Rana Muhammad Adnan Ikram, Aliakbar Gholampour, Kaywan Othman Ahmed, Salim Heddam, Sungwon Kim

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8 Citations (Scopus)
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