Ensuring that a predictor is not biased against a sensible feature is the key of Fairness learning. Conversely, Global Sensitivity Analysis is used in numerous contexts to monitor the influence of any feature on an output variable. We reconcile these two domains by showing how Fairness can be seen as a special framework of Global Sensitivity Analysis and how various usual indicators are common between these two fields. We also present new Global Sensitivity Analysis indices, as well as rates of convergence, that are useful as fairness proxies.
翻译:确保预测者不偏向于合理特征是公平学习的关键。相反,全球敏感度分析在许多场合被用来监测任何特征对产出变量的影响。我们通过显示公平性如何被视为全球敏感度分析的特殊框架以及这两个领域之间如何常见的各种常用指标来协调这两个领域。我们还提出了新的全球敏感度分析指数和趋同率,这些指数和趋同率作为公平代言人有用。