English

E-Commerce Delivery Demand Modeling Framework for An Agent-Based Simulation Platform

Econometrics 2020-10-28 v1

Abstract

The e-commerce delivery demand has grown rapidly in the past two decades and such trend has accelerated tremendously due to the ongoing coronavirus pandemic. Given the situation, the need for predicting e-commerce delivery demand and evaluating relevant logistics solutions is increasing. However, the existing simulation models for e-commerce delivery demand are still limited and do not consider the delivery options and their attributes that shoppers face on e-commerce order placements. We propose a novel modeling framework which jointly predicts the average total value of e-commerce purchase, the purchase amount per transaction, and delivery option choices. The proposed framework can simulate the changes in e-commerce delivery demand attributable to the changes in delivery options. We assume the model parameters based on various sources of relevant information and conduct a demonstrative sensitivity analysis. Furthermore, we have applied the model to the simulation for the Auto-Innovative Prototype city. While the calibration of the model using real-world survey data is required, the result of the analysis highlights the applicability of the proposed framework.

Cite

@article{arxiv.2010.14375,
  title  = {E-Commerce Delivery Demand Modeling Framework for An Agent-Based Simulation Platform},
  author = {Takanori Sakai and Yusuke Hara and Ravi Seshadri and André Alho and Md Sami Hasnine and Peiyu Jing and ZhiYuan Chua and Moshe Ben-Akiva},
  journal= {arXiv preprint arXiv:2010.14375},
  year   = {2020}
}
R2 v1 2026-06-23T19:41:25.233Z