In-Processing Modeling Techniques for Machine Learning Fairness: A Survey

Author:

Wan Mingyang1ORCID,Zha Daochen2ORCID,Liu Ninghao3ORCID,Zou Na4ORCID

Affiliation:

1. Department of Computer Science and Engineering, Texas A&M University

2. Department of Computer Science, Rice University

3. Department of Computer Science, University of Georgia

4. Department of Engineering Technology and Industrial Distribution, Texas A&M University

Abstract

Machine learning models are becoming pervasive in high-stakes applications. Despite their clear benefits in terms of performance, the models could show discrimination against minority groups and result in fairness issues in a decision-making process, leading to severe negative impacts on the individuals and the society. In recent years, various techniques have been developed to mitigate the unfairness for machine learning models. Among them, in-processing methods have drawn increasing attention from the community, where fairness is directly taken into consideration during model design to induce intrinsically fair models and fundamentally mitigate fairness issues in outputs and representations. In this survey, we review the current progress of in-processing fairness mitigation techniques. Based on where the fairness is achieved in the model, we categorize them into explicit and implicit methods, where the former directly incorporates fairness metrics in training objectives, and the latter focuses on refining latent representation learning. Finally, we conclude the survey with a discussion of the research challenges in this community to motivate future exploration.

Funder

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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