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# Explanation-Aware Automated Machine Learning
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This repository accompanies the research paper:
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**“Multi-Objective Automated Machine Learning for Explainable Artificial Intelligence: Optimizing Predictive Accuracy and Shapley-Based Feature Stability.”**
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In high-stakes domains such as agriculture, machine learning models must be not only accurate but also transparent and aligned with domain knowledge. This project presents a novel **multi-objective optimization framework** that jointly maximizes predictive performance and explanation stability. Specifically, we introduce a formal metric based on the **variance of Shapley Additive Explanations across cross-validation folds**, embedding it directly into the model selection process.
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Our approach leverages the **Non-dominated Sorting Genetic Algorithm II** to evolve models that balance predictive accuracy with robust, semantically consistent explanations. When applied to potato yield prediction, the framework outperforms both **H2O.ai's Automatic Machine Learning platform** and traditional grid search, producing models that are both high-performing and interpretable.
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## 🔍 Key Features
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- Multi-objective optimization for predictive accuracy and explanation stability
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- Shapley-based metric embedded into the model selection loop
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- Implementation using NSGA-II for evolutionary search
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- Reproducible case study in potato yield forecasting
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- Baseline comparisons with grid search and H2O.ai’s platform
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## 📂 Repository Structure
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