We initiate the study of fairness for ordinal regression. We adapt two fairness notions previously considered in fair ranking and propose a strategy for training a predictor that is approximately fair according to either notion. Our predictor has the form of a threshold model, composed of a scoring function and a set of thresholds, and our strategy is based on a reduction to fair binary classification for learning the scoring function and local search for choosing the thresholds. We provide generalization guarantees on the error and fairness violation of our predictor, and we illustrate the effectiveness of our approach in extensive experiments.
翻译:我们开始研究正统回归的公平性。 我们调整了先前在公平排名中考虑的两种公平性概念,并提出了一个战略来培训一个根据任何一种概念都大致公平的预测器。 我们的预测器具有一个门槛模型的形式,由评分函数和一套阈值组成,我们的战略以降低公平二进制分类为基础,用于学习评分函数并在当地寻找选择阈值。 我们对错误和公平性违反我们的预测器提供了一般化保障,我们展示了我们在广泛试验中的方法的有效性。