Doubly Stochastic Generative Arrivals Modeling

35 Pages Posted: 9 Mar 2021

See all articles by Yufeng Zheng

Yufeng Zheng

University of California, Berkeley - Department of Industrial Engineering and Operations Research

Zeyu Zheng

University of California, Berkeley

Date Written: December 30, 2020

Abstract

We propose a new framework named DS-WGAN that integrates the doubly stochastic (DS) structure and the Wasserstein generative adversarial networks (WGAN) to model, estimate, and simulate a wide class of arrival processes with general non-stationary and random arrival rates. Regarding statistical properties, we prove consistency and convergence rate for the estimator solved by the DS-WGAN framework under a non-parametric smoothness condition. Regarding computational efficiency and tractability, we address a challenge in gradient evaluation and model estimation, arised from the discontinuity in the simulator. We then show that the DS-WGAN framework can conveniently facilitate what-if simulation and predictive simulation for future scenarios that are different from the history. Numerical experiments with synthetic and real data sets are implemented to demonstrate the performance of DS-WGAN. The performance is measured from both a statistical perspective and an operational performance evaluation perspective. Numerical experiments suggest that, in terms of performance, the successful model estimation for DS-WGAN only requires a moderate size of representative data, which can be appealing in many contexts of operational management.

Suggested Citation

Zheng, Yufeng and Zheng, Zeyu, Doubly Stochastic Generative Arrivals Modeling (December 30, 2020). Available at SSRN: https://ssrn.com/abstract=3755865 or http://dx.doi.org/10.2139/ssrn.3755865

Yufeng Zheng

University of California, Berkeley - Department of Industrial Engineering and Operations Research ( email )

4141 Etcheverry Hall
Berkeley, CA 94720-1777
United States

Zeyu Zheng (Contact Author)

University of California, Berkeley ( email )

4125 Etcheverry Hall
Berkeley, CA 94720
United States

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
148
Abstract Views
1,134
Rank
423,044
PlumX Metrics