A major challenge for ridesharing platforms is to guarantee profit and fairness simultaneously, especially in the presence of misaligned incentives of drivers and riders. We focus on the dispatching-pricing problem to maximize the total revenue while keeping both drivers and riders satisfied. We study the computational complexity of the problem, provide a novel two-phased pricing solution with revenue and fairness guarantees, extend it to stochastic settings and develop a dynamic (a.k.a., learning-while-doing) algorithm that actively collects data to learn the demand distribution during the scheduling process. We also conduct extensive experiments to demonstrate the effectiveness of our algorithms.
翻译:搭车平台面临的一个主要挑战是同时保障利润和公平,特别是在驾驶员和驾驶员的激励不均的情况下。我们侧重于派遣定价问题,最大限度地增加总收入,同时让驾驶员和驾驶员都满意。我们研究这一问题的计算复杂性,提供具有收入和公平保障的新型两阶段定价解决方案,将其推广到随机环境,并开发动态(a.k.a.a.)即边干边学边学)算法,积极收集数据,以在时间安排过程中了解需求分配情况。我们还进行了广泛的实验,以展示我们的算法的有效性。