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Frankart_58031700_2023.pdf
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- This thesis addresses the pivotal topic of algorithmic fairness in predictive modeling, particularly in the banking environment, using ING’s 'pi_nextinvest' model as a case study. We critically explore the concept, implications, and mitigation strategies of algorithmic bias, applying various fairness enhancement techniques in pre-processing, in-processing, and post-processing stages. The findings highlight a complex interplay between fairness and predictive performance, emphasizing that achieving algorithmic fairness is not a linear task but rather a delicate balance contingent on specific contexts and constraints.