Fair for a few: Improving Fairness in Doubly Imbalanced Datasets

Yalcin, Ata, Ozturk, Asli Umay, Sever, Yigit, Pauw, Viktoria, Hachinger, Stephan, Toroslu, Ismail Hakki, Karagoz, Pinar

arXiv.org Artificial Intelligence 

With the technological advancements of the last couple of decades, machine learning (ML) and artificial intelligence (AI) play an important part in automated decision-making pipelines [1-3]. Even though these tools are generally created by optimising with respect to their accuracy and performance, there are other important aspects that should be considered, such as their fairness, robustness, and privacy [4]. One of these aspects, fairness, becomes even more crucial when AI-based tools are used for decision-making tasks such as checking whether accepting a credit application is profitable and risk-free, if an applicant is worthy of a job position, or if a defendant has a higher risk of committing a crime again.