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Blind Justice: Fairness with Encrypted Sensitive Attributes

Blind Justice: Fairness with Encrypted Sensitive Attributes

8 June 2018
Niki Kilbertus
Adria Gascon
Matt J. Kusner
Michael Veale
Krishna P. Gummadi
Adrian Weller
ArXivPDFHTML

Papers citing "Blind Justice: Fairness with Encrypted Sensitive Attributes"

21 / 21 papers shown
Title
FairJob: A Real-World Dataset for Fairness in Online Systems
FairJob: A Real-World Dataset for Fairness in Online Systems
Mariia Vladimirova
Federico Pavone
Eustache Diemert
54
1
0
03 Jul 2024
Laminator: Verifiable ML Property Cards using Hardware-assisted Attestations
Laminator: Verifiable ML Property Cards using Hardware-assisted Attestations
Vasisht Duddu
Oskari Jarvinen
Lachlan J. Gunn
Nirmal Asokan
74
1
0
25 Jun 2024
A Sequentially Fair Mechanism for Multiple Sensitive Attributes
A Sequentially Fair Mechanism for Multiple Sensitive Attributes
Franccois Hu
Philipp Ratz
Arthur Charpentier
FaML
22
6
0
12 Sep 2023
Mitigating Cross-client GANs-based Attack in Federated Learning
Mitigating Cross-client GANs-based Attack in Federated Learning
Hong Huang
Xinyu Lei
Tao Xiang
AAML
60
1
0
25 Jul 2023
Can Querying for Bias Leak Protected Attributes? Achieving Privacy With
  Smooth Sensitivity
Can Querying for Bias Leak Protected Attributes? Achieving Privacy With Smooth Sensitivity
Faisal Hamman
Jiahao Chen
Sanghamitra Dutta
25
9
0
03 Nov 2022
Differential Privacy has Bounded Impact on Fairness in Classification
Differential Privacy has Bounded Impact on Fairness in Classification
Paul Mangold
Michaël Perrot
A. Bellet
Marc Tommasi
41
17
0
28 Oct 2022
Federated Graph-based Networks with Shared Embedding
Federated Graph-based Networks with Shared Embedding
Tianyi Yu
Pei-Ci Lai
Fei Teng
FedML
34
3
0
03 Oct 2022
"You Can't Fix What You Can't Measure": Privately Measuring Demographic
  Performance Disparities in Federated Learning
"You Can't Fix What You Can't Measure": Privately Measuring Demographic Performance Disparities in Federated Learning
Marc Juárez
Aleksandra Korolova
FedML
34
9
0
24 Jun 2022
Federated learning: Applications, challenges and future directions
Federated learning: Applications, challenges and future directions
Subrato Bharati
Hossain Mondal
Prajoy Podder
V. B. Surya Prasath
FedML
41
53
0
18 May 2022
Demographic-Reliant Algorithmic Fairness: Characterizing the Risks of
  Demographic Data Collection in the Pursuit of Fairness
Demographic-Reliant Algorithmic Fairness: Characterizing the Risks of Demographic Data Collection in the Pursuit of Fairness
Mckane Andrus
Sarah Villeneuve
FaML
32
50
0
18 Apr 2022
Fairness-Driven Private Collaborative Machine Learning
Fairness-Driven Private Collaborative Machine Learning
Dana Pessach
Tamir Tassa
E. Shmueli
FedML
33
7
0
29 Sep 2021
MPC-Friendly Commitments for Publicly Verifiable Covert Security
MPC-Friendly Commitments for Publicly Verifiable Covert Security
Nitin Agrawal
James Bell
Adria Gascon
Matt J. Kusner
28
4
0
15 Sep 2021
Fairness without the sensitive attribute via Causal Variational
  Autoencoder
Fairness without the sensitive attribute via Causal Variational Autoencoder
Vincent Grari
Sylvain Lamprier
Marcin Detyniecki
24
27
0
10 Sep 2021
Multiaccurate Proxies for Downstream Fairness
Multiaccurate Proxies for Downstream Fairness
Emily Diana
Wesley Gill
Michael Kearns
K. Kenthapadi
Aaron Roth
Saeed Sharifi-Malvajerdi
35
21
0
09 Jul 2021
"What We Can't Measure, We Can't Understand": Challenges to Demographic
  Data Procurement in the Pursuit of Fairness
"What We Can't Measure, We Can't Understand": Challenges to Demographic Data Procurement in the Pursuit of Fairness
Mckane Andrus
Elena Spitzer
Jeffrey Brown
Alice Xiang
32
126
0
30 Oct 2020
An Overview of Federated Deep Learning Privacy Attacks and Defensive
  Strategies
An Overview of Federated Deep Learning Privacy Attacks and Defensive Strategies
David Enthoven
Zaid Al-Ars
FedML
60
50
0
01 Apr 2020
Fair Learning with Private Demographic Data
Fair Learning with Private Demographic Data
Hussein Mozannar
Mesrob I. Ohannessian
Nathan Srebro
35
73
0
26 Feb 2020
A Distributed Fair Machine Learning Framework with Private Demographic
  Data Protection
A Distributed Fair Machine Learning Framework with Private Demographic Data Protection
Hui Hu
Yijun Liu
Zhen Wang
Chao Lan
FaML
FedML
46
25
0
17 Sep 2019
QUOTIENT: Two-Party Secure Neural Network Training and Prediction
QUOTIENT: Two-Party Secure Neural Network Training and Prediction
Nitin Agrawal
Ali Shahin Shamsabadi
Matt J. Kusner
Adria Gascon
30
212
0
08 Jul 2019
Fair and Unbiased Algorithmic Decision Making: Current State and Future
  Challenges
Fair and Unbiased Algorithmic Decision Making: Current State and Future Challenges
Songül Tolan
FaML
24
31
0
15 Jan 2019
Differentially Private Fair Learning
Differentially Private Fair Learning
Matthew Jagielski
Michael Kearns
Jieming Mao
Alina Oprea
Aaron Roth
Saeed Sharifi-Malvajerdi
Jonathan R. Ullman
FaML
FedML
30
147
0
06 Dec 2018
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