Research implementation exploring the relationship between dataset complexity and optimal k parameter in Dynamic Classifier Selection methods.
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Updated
Dec 22, 2025 - Python
Research implementation exploring the relationship between dataset complexity and optimal k parameter in Dynamic Classifier Selection methods.
A comparative study of Static and Dynamic Ensemble Learning for credit card fraud detection. This project addresses extreme class imbalance by integrating reweighted class and undersampling techniques to optimize detection rates in skewed financial datasets.
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