Comparative Analysis of Explainable AI Methods for Manufacturing Defect Prediction: A Mathematical Perspective

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SDG

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The increasing complexity of manufacturing processes demands accurate defect prediction and interpretable insights into the causes of quality issues. This study proposes a methodology integrating machine learning, clustering, and Explainable Artificial Intelligence (XAI) to support defect analysis and quality control in industrial environments. Using a dataset based on empirical industrial distributions, we train an XGBoost model to classify high- and low-defect scenarios from multidimensional production and quality metrics.

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Marín Díaz, G. (2025). Comparative analysis of explainable ai methods for manufacturing defect prediction: A mathematical perspective. Mathematics, 13(15), 2436. https://doi.org/10.3390/math13152436

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Attribution 4.0 International

La licencia de este ítem se describe como Attribution 4.0 International