In online recommendation, customers arrive in a sequential and stochastic manner from an underlying distribution and the online decision model recommends a chosen item for each arriving individual based on some strategy. We study how to recommend an item at each step to maximize the expected reward while achieving user-side fairness for customers, i.e., customers who share similar profiles will receive a similar reward regardless of their sensitive attributes and items being recommended. By incorporating causal inference into bandits and adopting soft intervention to model the arm selection strategy, we first propose the d-separation based UCB algorithm (D-UCB) to explore the utilization of the d-separation set in reducing the amount of exploration needed to achieve low cumulative regret. Based on that, we then propose the fair causal bandit (F-UCB) for achieving the counterfactual individual fairness. Both theoretical analysis and empirical evaluation demonstrate effectiveness of our algorithms.
翻译:在网上建议中,客户从基本分布和在线决定模式中以顺序和随机方式从基本分布和在线决定模式中抵达,根据某种战略为每个抵达的个人推荐一个选定的项目。我们研究如何在每一步骤建议一个项目,以尽量扩大预期的奖赏,同时实现对客户的用户方公平,即拥有类似特征的客户将获得类似的奖赏,而不论其敏感属性和推荐的物品如何。通过将因果推论纳入土匪和采取软干预以模拟手臂选择战略,我们首先提议采用基于UCB算法的d分离算法(D-UCB),以探索如何利用D分离法来减少实现低累积遗憾所需的勘探量。在此基础上,我们提议公平因果带(F-UCB),以实现反实际的个人公平。我们理论分析和经验评价都展示了我们的算法的有效性。