English

FairCompass: Operationalising Fairness in Machine Learning

Machine Learning 2023-12-29 v1 Artificial Intelligence Computers and Society Software Engineering

Abstract

As artificial intelligence (AI) increasingly becomes an integral part of our societal and individual activities, there is a growing imperative to develop responsible AI solutions. Despite a diverse assortment of machine learning fairness solutions is proposed in the literature, there is reportedly a lack of practical implementation of these tools in real-world applications. Industry experts have participated in thorough discussions on the challenges associated with operationalising fairness in the development of machine learning-empowered solutions, in which a shift toward human-centred approaches is promptly advocated to mitigate the limitations of existing techniques. In this work, we propose a human-in-the-loop approach for fairness auditing, presenting a mixed visual analytical system (hereafter referred to as 'FairCompass'), which integrates both subgroup discovery technique and the decision tree-based schema for end users. Moreover, we innovatively integrate an Exploration, Guidance and Informed Analysis loop, to facilitate the use of the Knowledge Generation Model for Visual Analytics in FairCompass. We evaluate the effectiveness of FairCompass for fairness auditing in a real-world scenario, and the findings demonstrate the system's potential for real-world deployability. We anticipate this work will address the current gaps in research for fairness and facilitate the operationalisation of fairness in machine learning systems.

Keywords

Cite

@article{arxiv.2312.16726,
  title  = {FairCompass: Operationalising Fairness in Machine Learning},
  author = {Jessica Liu and Huaming Chen and Jun Shen and Kim-Kwang Raymond Choo},
  journal= {arXiv preprint arXiv:2312.16726},
  year   = {2023}
}

Comments

Accepted in IEEE Transactions on Artificial Intelligence

R2 v1 2026-06-28T14:03:14.519Z