Algorithmic recourse seeks to provide actionable recommendations for individuals to overcome unfavorable classification outcomes from automated decision-making systems. Recourse recommendations should ideally be robust to reasonably small uncertainty in the features of the individual seeking recourse. In this work, we formulate the adversarially robust recourse problem and show that recourse methods that offer minimally costly recourse fail to be robust. We then present methods for generating adversarially robust recourse for linear and for differentiable classifiers. Finally, we show that regularizing the decision-making classifier to behave locally linearly and to rely more strongly on actionable features facilitates the existence of adversarially robust recourse.
翻译:在这项工作中,我们提出了对抗性强的追索问题,并表明提供最低费用追索的追索方法不健全。然后,我们提出了为线性和不同分类者提供对抗性强的追索方法。最后,我们表明,使决策分类者在本地以线性方式行事,并更有力地依赖可诉的特点,有利于存在对抗性强的追索方法。