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Model Selection's Disparate Impact in Real-World Deep Learning Applications

Authors :
Forde, Jessica Zosa
Cooper, A. Feder
Kwegyir-Aggrey, Kweku
De Sa, Chris
Littman, Michael
Publication Year :
2021

Abstract

Algorithmic fairness has emphasized the role of biased data in automated decision outcomes. Recently, there has been a shift in attention to sources of bias that implicate fairness in other stages in the ML pipeline. We contend that one source of such bias, human preferences in model selection, remains under-explored in terms of its role in disparate impact across demographic groups. Using a deep learning model trained on real-world medical imaging data, we verify our claim empirically and argue that choice of metric for model comparison, especially those that do not take variability into account, can significantly bias model selection outcomes.<br />Comment: Science and Engineering of Deep Learning Workshop, ICLR 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2104.00606
Document Type :
Working Paper