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  An Empirical Study on Learning Fairness Metrics for COMPAS Data with Human Supervision

Wang, H., Grgic-Hlaca, N., Lahoti, P., Gummadi, K. P., & Weller, A. (2019). An Empirical Study on Learning Fairness Metrics for COMPAS Data with Human Supervision. Retrieved from https://arxiv.org/abs/1910.10255.

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Latex : An Empirical Study on Learning Fairness Metrics for {COMPAS} Data with Human Supervision

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arXiv:1910.10255.pdf (Preprint), 9KB
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File downloaded from arXiv at 2021-02-16 10:43 Accepted at NeurIPS 2019 HCML Workshop
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 Creators:
Wang, Hanchen1, Author
Grgic-Hlaca, Nina1, Author
Lahoti, Preethi2, Author           
Gummadi, Krishna P.1, Author
Weller, Adrian1, Author
Affiliations:
1External Organizations, ou_persistent22              
2Databases and Information Systems, MPI for Informatics, Max Planck Society, ou_24018              

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Free keywords: Computer Science, Computers and Society, cs.CY,Computer Science, Artificial Intelligence, cs.AI,Computer Science, Learning, cs.LG
 Abstract: The notion of individual fairness requires that similar people receive
similar treatment. However, this is hard to achieve in practice since it is
difficult to specify the appropriate similarity metric. In this work, we
attempt to learn such similarity metric from human annotated data. We gather a
new dataset of human judgments on a criminal recidivism prediction (COMPAS)
task. By assuming the human supervision obeys the principle of individual
fairness, we leverage prior work on metric learning, evaluate the performance
of several metric learning methods on our dataset, and show that the learned
metrics outperform the Euclidean and Precision metric under various criteria.
We do not provide a way to directly learn a similarity metric satisfying the
individual fairness, but to provide an empirical study on how to derive the
similarity metric from human supervisors, then future work can use this as a
tool to understand human supervision.

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Language(s): eng - English
 Dates: 2019-10-222019-10-312019
 Publication Status: Published online
 Pages: 7 p.
 Publishing info: -
 Table of Contents: -
 Rev. Type: -
 Identifiers: arXiv: 1910.10255
URI: https://arxiv.org/abs/1910.10255
BibTex Citekey: DBLP:journals/corr/abs-1910-10255
 Degree: -

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