Asymptotic properties for a class of partially identified models
成果类型:
Article
署名作者:
Beresteanu, Arie; Molinari, Francesca
署名单位:
Duke University; Cornell University
刊物名称:
ECONOMETRICA
ISSN/ISSBN:
0012-9682
DOI:
10.1111/j.1468-0262.2008.00859.x
发表日期:
2008
页码:
763-814
关键词:
SET-VALUED FUNCTIONS
Nonparametric analysis
OUTCOME DATA
bounds
parameters
inference
returns
摘要:
We propose inference procedures for partially identified population features for which the population identification region can be written as a transformation of the Aumann expectation of a properly defined set valued random variable (SVRV). An SVRV is a mapping that associates a set (rather than a real number) with each element of the sample space. Examples of population features in this class include interval-identified scalar parameters, best linear predictors with interval outcome data, and parameters of serniparametric binary models with interval regressor data. We extend the analogy principle to SVRVs and show that the sample analog estimator of the population identification region is given by a transformation of a Minkowski average of SVRVs. Using the results of the mathematics literature on SVRVs, we show that this estimator converges in probability to the population identification region with respect to the Hausdorff distance. We then show that the Hausdorff distance and the directed Hausdorff distance between the population identification region and the estimator, when properly normalized by root n, converge in distribution to functions of a Gaussian process whose covariance kernel depends on parameters of the population identification region. We provide consistent bootstrap procedures to approximate these limiting distributions. Using similar arguments as those applied for vector valued random variables, we develop a methodology to test assumptions about the true identification region and its subsets. We show that these results can be used to construct a confidence collection and a directed confidence collection. Those are (respectively) collection of sets that, when specified as a null hypothesis for the true value (a subset of values) of the population identification region, cannot be rejected by our tests.