Along with the rapid growth and rise to prominence of food delivery platforms, concerns have also risen about the terms of employment of the gig workers underpinning this growth. Our analysis on data derived from a real-world food delivery platform across three large cities from India show that there is significant inequality in the money delivery agents earn. In this paper, we formulate the problem of fair income distribution among agents while also ensuring timely food delivery. We establish that the problem is not only NP-hard but also inapproximable in polynomial time. We overcome this computational bottleneck through a novel matching algorithm called FairFoody. Extensive experiments over real-world food delivery datasets show FairFoody imparts up to 10 times improvement in equitable income distribution when compared to baseline strategies, while also ensuring minimal impact on customer experience.
翻译:随着食品供应平台的快速增长和日益突出,人们对支持这一增长的“工作”工人的就业条件的关切也有所上升。我们对来自印度三个大城市真实世界食品供应平台的数据的分析表明,在货币提供商收入方面存在着严重的不平等。在本文件中,我们提出了代理商之间收入公平分配的问题,同时也确保了及时提供食品。我们确定,问题不仅在于NP硬,而且在多元时间里也是不可取的。我们通过名为FairFoody的新型匹配算法克服了这一计算瓶颈。对真实世界食品供应数据集的广泛实验显示,与基线战略相比,FairFoody在公平收入分配方面提供了多达10倍的改善,同时也确保了对客户经验的影响最小。