Fairness-aware learning mainly focuses on single task learning (STL). The fairness implications of multi-task learning (MTL) have only recently been considered and a seminal approach has been proposed that considers the fairness-accuracy trade-off for each task and the performance trade-off among different tasks. Instead of a rigid fairness-accuracy trade-off formulation, we propose a flexible approach that learns how to be fair in a MTL setting by selecting which objective (accuracy or fairness) to optimize at each step. We introduce the L2T-FMT algorithm that is a teacher-student network trained collaboratively; the student learns to solve the fair MTL problem while the teacher instructs the student to learn from either accuracy or fairness, depending on what is harder to learn for each task. Moreover, this dynamic selection of which objective to use at each step for each task reduces the number of trade-off weights from 2T to T, where T is the number of tasks. Our experiments on three real datasets show that L2T-FMT improves on both fairness (12-19%) and accuracy (up to 2%) over state-of-the-art approaches.
翻译:公平理解学习主要侧重于单一任务学习(STL) 。 多任务学习(MTL)的公平影响直到最近才得到审议,并提出了考虑每项任务公平-准确权衡和不同任务之间业绩权衡的开创性方法。我们建议了一种灵活的方法,通过选择每个步骤的最佳目标(准确或公平)在MTL设置中学会如何公平。我们引入了L2T-FMT算法,这是一种师生协作培训网络;学生学会解决公平的MTL问题,而教师则指示学生根据每项任务更难学习的内容,从准确或公平的角度学习。此外,这种在每项任务中每个步骤使用的目标的动态选择减少了交易权重从2T到T的数量,T就是任务的数量。我们在三个实际数据集上的实验显示,L2T-FMT在公平(12-19%)和准确性(最高至2 %)两方面都提高了公平性(最高至2 %)。