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  4. The Effect of Adversarial Debiasing on Model Performance
 
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2023
Conference Paper
Title

The Effect of Adversarial Debiasing on Model Performance

Abstract
This paper explores the effect of adversarial debiasing on the performance of machine learning models. As concerns about fairness in algorithmic decision-making grow, techniques for detecting and mitigating biases in ML models have been developed. However, there is a trade-off between fairness and model performance. This study investigates the impact of using adversarial debiasing on model performance in different scenarios of potential sampling biases and target distributions. Simulated data with varying structural and sampling parameters is used to evaluate the models’ performance. The results show that while adversarial debiasing can lead to significant improvements in certain scenarios, it can also result in impairments or no significant difference in performance compared to the normal models.
Author(s)
Götte, Gesa Marie
Fraunhofer-Institut für Fabrikbetrieb und -automatisierung IFF  
Mainwork
INFORMATIK 2023 - Designing Futures: Zukünfte gestalten  
Conference
Gesellschaft für Informatik (Jahrestagung) 2023  
DOI
10.18420/inf2023_01
Language
English
Fraunhofer-Institut für Fabrikbetrieb und -automatisierung IFF  
Keyword(s)
  • Debiasing

  • Fair AI

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