2023
DOI: 10.1007/s10994-023-06448-0
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Solving imbalanced learning with outlier detection and features reduction

Salvatore Lusito,
Andrea Pugnana,
Riccardo Guidotti

Abstract: A critical problem for several real world applications is class imbalance. Indeed, in contexts like fraud detection or medical diagnostics, standard machine learning models fail because they are designed to handle balanced class distributions. Existing solutions typically increase the rare class instances by generating synthetic records to achieve a balanced class distribution. However, these procedures generate not plausible data and tend to create unnecessary noise. We propose a change of perspective where i… Show more

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