基于辅助图结构学习的路径特定因果公平预测

Liuyi Yao, Yaliang Li, Bolin Ding, Jingren Zhou, Jinduo Liu, Mengdi Huai, Jing Gao
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引用次数: 4

摘要

随着机器学习算法在推荐系统、社交网络等web技术中的广泛应用,算法公平性已经成为一个热门话题,对社会福利产生了很大的影响。在不同的公平性定义中,路径特定的因果公平性是一种被广泛采用的具有很大潜力的公平性定义,因为它区分了敏感属性对算法预测的公平和不公平影响。现有的基于路径特定因果公平性的方法要么需要图结构作为先验知识,要么在计算路径特定效应时具有较高的复杂性。为了解决这些挑战,我们提出了一种基于随机图的公平预测框架,该框架将图结构学习集成到公平预测中,以确保不公平路径被排除在因果图中。此外,我们将所提出的框架推广到敏感属性可能是非根节点并受其他变量影响的场景,这在现实应用中很常见,例如推荐系统,但现有作品很少解决。我们对所提出的公平预测方法的泛化界进行了理论分析,并在实际数据集上进行了一系列实验,证明所提出的框架能够提供更好的预测性能和算法公平性权衡。
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Path-specific Causal Fair Prediction via Auxiliary Graph Structure Learning
With ubiquitous adoption of machine learning algorithms in web technologies, such as recommendation system and social network, algorithm fairness has become a trending topic, and it has a great impact on social welfare. Among different fairness definitions, path-specific causal fairness is a widely adopted one with great potentials, as it distinguishes the fair and unfair effects that the sensitive attributes exert on algorithm predictions. Existing methods based on path-specific causal fairness either require graph structure as the prior knowledge or have high complexity in the calculation of path-specific effect. To tackle these challenges, we propose a novel casual graph based fair prediction framework which integrates graph structure learning into fair prediction to ensure that unfair pathways are excluded in the causal graph. Furthermore, we generalize the proposed framework to the scenarios where sensitive attributes can be non-root nodes and affected by other variables, which is commonly observed in real-world applications, such as recommendation system, but hardly addressed by existing works. We provide theoretical analysis on the generalization bound for the proposed fair prediction method, and conduct a series of experiments on real-world datasets to demonstrate that the proposed framework can provide better prediction performance and algorithm fairness trade-off.
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