Saved in:
Bibliographic Details
Main Authors: Liu, Le, Yu, Bangguo, Vellinga, Nynke, Cao, Ming
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.08953
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912822754017280
author Liu, Le
Yu, Bangguo
Vellinga, Nynke
Cao, Ming
author_facet Liu, Le
Yu, Bangguo
Vellinga, Nynke
Cao, Ming
contents Complex decision-making by autonomous machines and algorithms could underpin the foundations of future society. Generative AI is emerging as a powerful engine for such transitions. However, we show that Generative AI-driven developments pose a critical pitfall: fairness concerns. In robotic applications, although intuitions about fairness are common, a precise and implementable definition that captures user utility and inherent data randomness is missing. Here we provide a utility-aware fairness metric for robotic decision making and analyze fairness jointly with user-data privacy, deriving conditions under which privacy budgets govern fairness metrics. This yields a unified framework that formalizes and quantifies fairness and its interplay with privacy, which is tested in a robot navigation task. In view of the fact that under legal requirements, most robotic systems will enforce user privacy, the approach shows surprisingly that such privacy budgets can be jointly used to meet fairness targets. Addressing fairness concerns in the creative combined consideration of privacy is a step towards ethical use of AI and strengthens trust in autonomous robots deployed in everyday environments.
format Preprint
id arxiv_https___arxiv_org_abs_2601_08953
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Fairness risk and its privacy-enabled solution in AI-driven robotic applications
Liu, Le
Yu, Bangguo
Vellinga, Nynke
Cao, Ming
Robotics
Artificial Intelligence
Complex decision-making by autonomous machines and algorithms could underpin the foundations of future society. Generative AI is emerging as a powerful engine for such transitions. However, we show that Generative AI-driven developments pose a critical pitfall: fairness concerns. In robotic applications, although intuitions about fairness are common, a precise and implementable definition that captures user utility and inherent data randomness is missing. Here we provide a utility-aware fairness metric for robotic decision making and analyze fairness jointly with user-data privacy, deriving conditions under which privacy budgets govern fairness metrics. This yields a unified framework that formalizes and quantifies fairness and its interplay with privacy, which is tested in a robot navigation task. In view of the fact that under legal requirements, most robotic systems will enforce user privacy, the approach shows surprisingly that such privacy budgets can be jointly used to meet fairness targets. Addressing fairness concerns in the creative combined consideration of privacy is a step towards ethical use of AI and strengthens trust in autonomous robots deployed in everyday environments.
title Fairness risk and its privacy-enabled solution in AI-driven robotic applications
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2601.08953