结构动态离散选择模型的反事实分析

Counterfactual Analysis for Structural Dynamic Discrete Choice Models

Review of Economic Studies · 2026
被引 0
人大 A+FT50ABS 4*

中文导读

研究了在结构动态离散选择模型中,如何部分识别政策相关的反事实结果,并提供了计算方法和推断程序,适用于企业出口决策等实证问题。

Abstract

Abstract Discrete choice data allow researchers to recover differences in utilities, but these differences may not suffice to identify policy-relevant counterfactuals of interest. In fact, in the case of dynamic discrete choice models, only a narrow set of counterfactuals are point-identified. In this paper, we explore how much one can learn about counterfactual outcomes of interest within this framework. We focus on the partial identification of counterfactuals, while allowing for (mild) model restrictions that can gradually shrink the identified set. We derive bounds for low-dimensional objects (such as average welfare) as arguments of optimization programmes, along with a uniformly valid inference procedure. Furthermore, we develop new and tractable computational tools and algorithms suitable for dealing with high-dimensional problems like this. Finally, we illustrate in Monte Carlos, as well as an empirical exercise of firms’ export decisions, the informativeness of the identified sets, and we assess the impact of (common) model restrictions on results.

反事实分析结构动态离散选择模型部分识别识别集