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MRR Journal

Abstract

Indian Journal of Modern Research and Reviews, 2026; 4(3): 182-193

Enhancing Marble Waste Recycling Through Machine Learning: The Role of Particle Size Variation and Class Imbalance Mitigation

Author Name: Shambhavi Sinha

1. Research Scholar, Department of Mining Engineering, National Institute of Technology Surathkal, Mangaluru, Karnataka

Abstract

<p>This study harnesses machine learning to innovate marble waste recycling, delivering a novel, data-driven solution for sustainable construction and industrial applications. Utilising a dataset of 20,000 records, the research pinpointed particle size as a pivotal factor, with finer particles (&lt;10 &micro;m) ideal for Calcium Carbonate production and larger particles (&gt;50 &micro;m) suited for Aggregates. Exploratory data analysis, conducted with precision, revealed significant particle size variation across waste types (ANOVA: F=36.26, p=2.34e-23), guiding meticulous feature engineering, including particle size binning and interaction terms. Three classification models, Random Forest, XGBoost, and Logistic Regression, were rigorously developed, with SMOTE addressing class imbalance. Post-SMOTE, Random Forest achieved a macro-averaged F1-score of 0.52, markedly improving minority class predictions (Calcium Carbonate: 0.49; Other: 0.30), though overall accuracy (0.57) reflects trade-offs in majority class performance. Feature importance and SHAP analyses, clearly presented, underscored Waste Type&rsquo;s dominance (r=0.683) and particle size&rsquo;s critical role.</p>

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Keywords

waste recycling, sustainable construction, ANOVA, Random Forest, XGBoost, and Logistic Regression