The increasing application of machine learning techniques in everyday decision-making processes has brought concerns about the fairness of algorithmic decision-making. This paper concerns the problem of collider bias which produces spurious associations in fairness assessment and develops theorems to guide fairness assessment avoiding the collider bias. We consider a real-world application of auditing a trained classifier by an audit agency. We propose an unbiased assessment algorithm by utilising the developed theorems to reduce collider biases in the assessment. Experiments and simulations show the proposed algorithm reduces collider biases significantly in the assessment and is promising in auditing trained classifiers.
翻译:在日常决策过程中日益应用机器学习技术使人们对算法决策的公平性产生关切,本文件涉及相互碰撞的偏见问题,这种偏见在公平评估方面产生了虚假的协会,并发展了指导公平评估的理论,避免了相互碰撞的偏见。我们考虑由审计机构实际应用经过培训的分类师进行审计。我们建议采用一种公正的评估算法,利用发达的理论来减少评估中的相互碰撞的偏见。实验和模拟表明,拟议的算法大大减少了评估中的相互碰撞的偏见,在审计经过培训的分类员方面很有希望。