Data-driven estimation in equilibrium using inverse optimization

被引:0
|
作者
Dimitris Bertsimas
Vishal Gupta
Ioannis Ch. Paschalidis
机构
[1] Massachusetts Institute of Technology,MIT, Sloan School of Management
[2] Massachusetts Institute of Technology,Operations Research Center
[3] Boston University,Department of Electrical and Computer Engineering
来源
Mathematical Programming | 2015年 / 153卷
关键词
Equilibrium; Nonparametric estimation; Utility estimation; Traffic assignment; 74G75 Equilibrium: Inverse Problems; 62G05 Nonparametric Inference: Estimation; 62P20 Applications to Economics; 90B20 Operations Research and Management Science: Traffic Problems;
D O I
暂无
中图分类号
学科分类号
摘要
Equilibrium modeling is common in a variety of fields such as game theory and transportation science. The inputs for these models, however, are often difficult to estimate, while their outputs, i.e., the equilibria they are meant to describe, are often directly observable. By combining ideas from inverse optimization with the theory of variational inequalities, we develop an efficient, data-driven technique for estimating the parameters of these models from observed equilibria. We use this technique to estimate the utility functions of players in a game from their observed actions and to estimate the congestion function on a road network from traffic count data. A distinguishing feature of our approach is that it supports both parametric and nonparametric estimation by leveraging ideas from statistical learning (kernel methods and regularization operators). In computational experiments involving Nash and Wardrop equilibria in a nonparametric setting, we find that a) we effectively estimate the unknown demand or congestion function, respectively, and b) our proposed regularization technique substantially improves the out-of-sample performance of our estimators.
引用
收藏
页码:595 / 633
页数:38
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