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Different Horses for Different Courses: Comparing Bias Mitigation Algorithms in ML

17 November 2024
Prakhar Ganesh
Usman Gohar
Lu Cheng
G. Farnadi
    FaML
ArXiv (abs)PDFHTML

Papers citing "Different Horses for Different Courses: Comparing Bias Mitigation Algorithms in ML"

9 / 9 papers shown
Title
Long-Term Fairness Inquiries and Pursuits in Machine Learning: A Survey of Notions, Methods, and Challenges
Long-Term Fairness Inquiries and Pursuits in Machine Learning: A Survey of Notions, Methods, and Challenges
Usman Gohar
Zeyu Tang
Jialu Wang
Kun Zhang
Peter Spirtes
Yang Liu
Lu Cheng
FaML
117
4
0
10 Jun 2024
Toward Operationalizing Pipeline-aware ML Fairness: A Research Agenda
  for Developing Practical Guidelines and Tools
Toward Operationalizing Pipeline-aware ML Fairness: A Research Agenda for Developing Practical Guidelines and Tools
Maximilian Schambach
Rakshit Naidu
Rayid Ghani
Kit T. Rodolfa
Daniel E. Ho
Hoda Heidari
FaML
70
17
0
29 Sep 2023
Towards Understanding Fairness and its Composition in Ensemble Machine
  Learning
Towards Understanding Fairness and its Composition in Ensemble Machine Learning
Usman Gohar
Sumon Biswas
Hridesh Rajan
FaMLFedML
67
26
0
08 Dec 2022
Rethinking Bias Mitigation: Fairer Architectures Make for Fairer Face
  Recognition
Rethinking Bias Mitigation: Fairer Architectures Make for Fairer Face Recognition
Samuel Dooley
R. Sukthanker
John P. Dickerson
Colin White
Frank Hutter
Micah Goldblum
CVBM
121
23
0
18 Oct 2022
Predictive Multiplicity in Classification
Predictive Multiplicity in Classification
Charles Marx
Flavio du Pin Calmon
Berk Ustun
136
147
0
14 Sep 2019
Rényi Fair Inference
Rényi Fair Inference
Sina Baharlouei
Maher Nouiehed
Ahmad Beirami
Meisam Razaviyayn
FaML
64
67
0
28 Jun 2019
Learning Adversarially Fair and Transferable Representations
Learning Adversarially Fair and Transferable Representations
David Madras
Elliot Creager
T. Pitassi
R. Zemel
FaML
384
685
0
17 Feb 2018
A comparative study of fairness-enhancing interventions in machine
  learning
A comparative study of fairness-enhancing interventions in machine learning
Sorelle A. Friedler
C. Scheidegger
Suresh Venkatasubramanian
Sonam Choudhary
Evan P. Hamilton
Derek Roth
FaML
109
648
0
13 Feb 2018
Learning to Pivot with Adversarial Networks
Learning to Pivot with Adversarial Networks
Gilles Louppe
Michael Kagan
Kyle Cranmer
76
227
0
03 Nov 2016
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