半参数识别与费希尔信息

SEMIPARAMETRIC IDENTIFICATION AND FISHER INFORMATION

Econometric Theory · 2021
被引 3
人大 A-ABS 4

中文导读

基于统计信息作为识别“质量”的度量,系统研究了半参数模型中的正则与不规则识别,并引入广义费希尔信息,通过三个实例展示了其应用。

Abstract

This paper provides a systematic approach to semiparametric identification that is based on statistical information as a measure of its “quality.” Identification can be regular or irregular, depending on whether the Fisher information for the parameter is positive or zero, respectively. I first characterize these cases in models with densities linear in an infinite-dimensional parameter. I then introduce a novel “generalized Fisher information.” If positive, it implies (possibly irregular) identification when other conditions hold. If zero, it implies impossibility results on rates of estimation. Three examples illustrate the applicability of the general results. First, I consider the canonical example of average densities. Second, I show irregular identification of the median willingness to pay in contingent valuation studies. Finally, I study identification of the discount factor and average measures of risk aversion in a nonparametric Euler equation with nonparametric measurement error in consumption.

半参数识别Fisher信息不规则识别广义Fisher信息