Holistic Survey of Privacy and Fairness in Machine Learning

07/28/2023
by   Sina Shaham, et al.
0

Privacy and fairness are two crucial pillars of responsible Artificial Intelligence (AI) and trustworthy Machine Learning (ML). Each objective has been independently studied in the literature with the aim of reducing utility loss in achieving them. Despite the significant interest attracted from both academia and industry, there remains an immediate demand for more in-depth research to unravel how these two objectives can be simultaneously integrated into ML models. As opposed to well-accepted trade-offs, i.e., privacy-utility and fairness-utility, the interrelation between privacy and fairness is not well-understood. While some works suggest a trade-off between the two objective functions, there are others that demonstrate the alignment of these functions in certain scenarios. To fill this research gap, we provide a thorough review of privacy and fairness in ML, including supervised, unsupervised, semi-supervised, and reinforcement learning. After examining and consolidating the literature on both objectives, we present a holistic survey on the impact of privacy on fairness, the impact of fairness on privacy, existing architectures, their interaction in application domains, and algorithms that aim to achieve both objectives while minimizing the utility sacrificed. Finally, we identify research challenges in achieving privacy and fairness concurrently in ML, particularly focusing on large language models.

READ FULL TEXT

page 24

page 37

research
02/17/2023

Learning with Impartiality to Walk on the Pareto Frontier of Fairness, Privacy, and Utility

Deploying machine learning (ML) models often requires both fairness and ...
research
02/15/2023

Evaluating Trade-offs in Computer Vision Between Attribute Privacy, Fairness and Utility

This paper investigates to what degree and magnitude tradeoffs exist bet...
research
03/31/2021

Achieving Transparency Report Privacy in Linear Time

An accountable algorithmic transparency report (ATR) should ideally inve...
research
07/14/2023

Fairness of ChatGPT and the Role Of Explainable-Guided Prompts

Our research investigates the potential of Large-scale Language Models (...
research
05/22/2023

Causality-Aided Trade-off Analysis for Machine Learning Fairness

There has been an increasing interest in enhancing the fairness of machi...
research
10/20/2020

Where Is the Normative Proof? Assumptions and Contradictions in ML Fairness Research

Across machine learning (ML) sub-disciplines researchers make mathematic...

Please sign up or login with your details

Forgot password? Click here to reset