The goal of algorithmic recourse is to reverse unfavorable decisions (e.g., from loan denial to approval) under automated decision making by suggesting actionable feature changes (e.g., reduce the number of credit cards). To generate low-cost recourse the majority of methods work under the assumption that the features are independently manipulable (IMF). To address the feature dependency issue the recourse problem is usually studied through the causal recourse paradigm. However, it is well known that strong assumptions, as encoded in causal models and structural equations, hinder the applicability of these methods in complex domains where causal dependency structures are ambiguous. In this work, we develop \texttt{DEAR} (DisEntangling Algorithmic Recourse), a novel and practical recourse framework that bridges the gap between the IMF and the strong causal assumptions. \texttt{DEAR} generates recourses by disentangling the latent representation of co-varying features from a subset of promising recourse features to capture the main practical recourse desiderata. Our experiments on real-world data corroborate our theoretically motivated recourse model and highlight our framework's ability to provide reliable, low-cost recourse in the presence of feature dependencies.
翻译:算法追索的目的是通过提出可采取行动的特点变化(例如,减少信用卡数量)来扭转自动决策下不受欢迎的决定(例如,从拒绝贷款到批准),提出可采取行动的特点变化(例如,减少信用卡数量);为了产生低成本的追索,大多数方法的工作假设是,这些特征是独立的(货币基金组织);为解决依赖性特征问题,通常通过因果追索范式来研究追索问题;然而,众所周知,在因果模式和结构方程式中编码的强有力的假设阻碍了这些方法在因果依赖结构模棱两可的复杂领域的适用性。在这项工作中,我们开发了\ textt{DEAR}(Dettrett{DEAR})(Dextt{Dearthrealth Recum),这是一个新颖而实用的追索框架,它弥合了货币基金组织与强有力的因果关系假设之间的差距。\textt{DEAR}产生追索权问题,因为它使共变特征的潜在代表性与获取主要实际追索权的有希望的特征的一组特征脱钩。我们在现实世界数据上的实验证实了我们理论上有动机的追索索索权的模式,并强调我们框架在可靠、低索权方面的脆弱性。