all AI news
Don't Throw it Away! The Utility of Unlabeled Data in Fair Decision Making. (arXiv:2205.04790v1 [stat.ML])
Web: http://arxiv.org/abs/2205.04790
May 11, 2022, 1:11 a.m. | Miriam Rateike, Ayan Majumdar, Olga Mineeva, Krishna P. Gummadi, Isabel Valera
cs.LG updates on arXiv.org arxiv.org
Decision making algorithms, in practice, are often trained on data that
exhibits a variety of biases. Decision-makers often aim to take decisions based
on some ground-truth target that is assumed or expected to be unbiased, i.e.,
equally distributed across socially salient groups. In many practical settings,
the ground-truth cannot be directly observed, and instead, we have to rely on a
biased proxy measure of the ground-truth, i.e., biased labels, in the data. In
addition, data is often selectively labeled, i.e., …
More from arxiv.org / cs.LG updates on arXiv.org
Latest AI/ML/Big Data Jobs
Director, Applied Mathematics & Computational Research Division
@ Lawrence Berkeley National Lab | Berkeley, Ca
Business Data Analyst
@ MainStreet Family Care | Birmingham, AL
Assistant/Associate Professor of the Practice in Business Analytics
@ Georgetown University McDonough School of Business | Washington DC
Senior Data Science Writer
@ NannyML | Remote
Director of AI/ML Engineering
@ Armis Industries | Remote (US only), St. Louis, California
Digital Analytics Manager
@ Patagonia | Ventura, California