Consider a panel data setting where repeated observations on individuals are available. Often it is reasonable to assume that there exist groups of individuals that share similar effects of observed characteristics, but the grouping is typically unknown in advance. We propose a novel approach to estimate such unobserved groupings for general panel data models. Our method explicitly accounts for the uncertainty in individual parameter estimates and remains computationally feasible with a large number of individuals and/or repeated measurements on each individual. The developed ideas can be applied even when individual-level data are not available and only parameter estimates together with some quantification of uncertainty are given to the researcher.
翻译:通常可以合理地假定,存在与所观察到的特征具有类似效果的一组个人,但通常事先不为人所知。我们提议为一般小组数据模型采用新的方法来估计这种未观察到的组别。我们的方法明确说明了个别参数估计数的不确定性,在计算上仍然可行,有大量个人和(或)对每个人进行反复测量。即使没有个人一级的数据,而且只向研究人员提供参数估计数和某些不确定性的量化,也可以应用已形成的想法。