固定效应面板Probit模型中个体效应的预测

Predicting Individual Effects in Fixed Effects Panel Probit Models

Journal of the Royal Statistical Society. Series A: Statistics in Society · 2021
被引 13
ABS 3

中文导读

针对短面板固定效应二元响应模型中个体效应估计偏差大的问题,提出一种偏差校正估计量,能提供有限预测值,适用于所有个体效应,包括因变量全为0或1的情况。

Abstract

Abstract Many applied settings in empirical economics require estimation of a large number of individual effects, like teacher effects or location effects; in health economics, prominent examples include patient effects, doctor effects or hospital effects. Increasingly, these effects are the object of interest of the estimation, and predicted effects are often used for further descriptive and regression analyses. To avoid imposing distributional assumptions on these effects, they are typically estimated via fixed effects methods. In short panels, the conventional maximum likelihood estimator for fixed effects binary response models provides poor estimates of these individual effects since the finite sample bias is typically substantial. We present a bias-reduced fixed effects estimator that provides better estimates of the individual effects in these models by removing the first-order asymptotic bias. An additional, practical advantage of the estimator is that it provides finite predictions for all individual effects in the sample, including those for which the corresponding dependent variable has identical outcomes in all time periods over time (either all zeros or ones); for these, the maximum likelihood prediction is infinite. We illustrate the approach in simulation experiments and in an application to health care utilization.

计量经济学面板数据二元响应模型固定效应估计