668 / 2024-05-07 09:56:58
Robust Workforce Management with Crowdsourced Delivery
Workforce management, crowdsourced delivery, uncertain ad-hoc couriers, data-driven robust satisficing
摘要待审
ChengChun / Dalian University of Technology
SimMelvyn / National University of Singapore
ZhaoYue / National University of Singapore
We investigate how crowdsourced delivery platforms with both contracted and ad-hoc couriers can effectively manage their workforce to meet delivery demands amidst uncertainties. Our objective is to minimize the hiring costs of contracted couriers and the crowdsourcing costs of ad-hoc couriers while considering the uncertain availability and behavior of the latter. Due to the complication of calibrating these uncertainties through data-driven approaches, we instead introduce a basic reduced information model to estimate the upper bound of the crowdsourcing cost and a generalized reduced information model to obtain a tighter bound. Subsequently, we formulate a robust satisficing model associated with the generalized reduced information model and show that a binary search algorithm can tackle the model exactly by solving a modest number of convex optimization problems. Our numerical tests using Solomon's data sets show that reduced information models provide decent approximations for practical delivery scenarios. Simulation tests further demonstrate that the robust satisficing model has better out-of-sample performance than the empirical optimization model that minimizes the total cost under historical scenarios. 

(备注:Track 15, session name: robust and stochastic decision-making under uncertainty, chaired by Chun Peng, Beijing Jiaotong University. Thanks. )
重要日期
  • 会议日期

    06月28日

    2024

    07月01日

    2024

  • 07月01日 2024

    注册截止日期

主办单位
中国科学技术大学
协办单位
管理科学与工程学会
联系方式
移动端
在手机上打开
小程序
打开微信小程序
客服
扫码或点此咨询