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arxiv: 2207.12138 · v1 · pith:SC7VLUJMnew · submitted 2022-07-22 · 🧮 math.OC · cs.AI· cs.LG· cs.NE

Towards Fairness-Aware Multi-Objective Optimization

classification 🧮 math.OC cs.AIcs.LGcs.NE
keywords optimizationmulti-objectivefairness-awarefairnesslearningmachineproblemsseen
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Recent years have seen the rapid development of fairness-aware machine learning in mitigating unfairness or discrimination in decision-making in a wide range of applications. However, much less attention has been paid to the fairness-aware multi-objective optimization, which is indeed commonly seen in real life, such as fair resource allocation problems and data driven multi-objective optimization problems. This paper aims to illuminate and broaden our understanding of multi-objective optimization from the perspective of fairness. To this end, we start with a discussion of user preferences in multi-objective optimization and then explore its relationship to fairness in machine learning and multi-objective optimization. Following the above discussions, representative cases of fairness-aware multiobjective optimization are presented, further elaborating the importance of fairness in traditional multi-objective optimization, data-driven optimization and federated optimization. Finally, challenges and opportunities in fairness-aware multi-objective optimization are addressed. We hope that this article makes a small step forward towards understanding fairness in the context of optimization and promote research interest in fairness-aware multi-objective optimization.

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