DOI: 10.26686/wgtn.24749466
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Genetic Programming for Binary Classification with High-dimensional Unbalanced Data

Wenbin Pei

Abstract: <p dir="ltr">Class imbalance and high dimensionality have been acknowledged as two tough issues in classification. Learning from unbalanced data, the constructed classifiers are often biased towards the majority class, and thereby perform poorly on the minority class. Unfortunately, the minority class is often the class of interest in many real-world applications, such as medical diagnosis and fault detection. High dimensionality often makes it more difficult to handle the class imbalance issue. To date,… Show more

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