AbstractStatistical analyses commonly make use of models that suffer from loss of identifiability. In this paper, we address important issues related to the parameter estimation and hypothesis testing in models with loss of identifiability. That is, there are multiple parameter points corresponding to the same true model. We refer the set of these parameter points to as the set of true parameter values. We consider the case where the set of true parameter values is allowed to be very large or even infinite, some parameter values may lie on the boundary of the parameter space, and the data are not necessarily independently and identically distributed. Our results are applicable to a large class of estimators and their related testing statist...
We propose inference procedures for partially identified population features for which the populatio...
It sometimes occurs that one or more components of the data exert a disproportionate influence on th...
AbstractThe traditional way to cope with missing data problems has been to combine the available dat...
AbstractStatistical analyses commonly make use of models that suffer from loss of identifiability. I...
We consider tests of hypotheses when the parameters are not identifiable under the null in semiparam...
This paper discusses the asymptotic behavior of regression models under general conditions. First, w...
peer reviewedWe consider the problem of estimating the joint distribution of n independent random va...
This paper analyzes the properties of a class of estimators, tests, and confidence sets (CS’s) when t...
This paper provides a set of results that can be used to establish the asymptotic size and/or simila...
AbstractWe study the asymptotics of maximum-likelihood ratio-type statistics for testing a sequence ...
Parametric mixture models are commonly used in applied work, especially empirical economics, where t...
International audienceThis paper discusses the asymptotic behavior of regression models under genera...
AbstractStochastic modeling for large-scale datasets usually involves a varying-dimensional model sp...
In their paper, Davies and Gather (1993) formalized the task of outlier identification, considering ...
In the setting of high-dimensional linear models with Gaussian noise, we investigate the possibility...
We propose inference procedures for partially identified population features for which the populatio...
It sometimes occurs that one or more components of the data exert a disproportionate influence on th...
AbstractThe traditional way to cope with missing data problems has been to combine the available dat...
AbstractStatistical analyses commonly make use of models that suffer from loss of identifiability. I...
We consider tests of hypotheses when the parameters are not identifiable under the null in semiparam...
This paper discusses the asymptotic behavior of regression models under general conditions. First, w...
peer reviewedWe consider the problem of estimating the joint distribution of n independent random va...
This paper analyzes the properties of a class of estimators, tests, and confidence sets (CS’s) when t...
This paper provides a set of results that can be used to establish the asymptotic size and/or simila...
AbstractWe study the asymptotics of maximum-likelihood ratio-type statistics for testing a sequence ...
Parametric mixture models are commonly used in applied work, especially empirical economics, where t...
International audienceThis paper discusses the asymptotic behavior of regression models under genera...
AbstractStochastic modeling for large-scale datasets usually involves a varying-dimensional model sp...
In their paper, Davies and Gather (1993) formalized the task of outlier identification, considering ...
In the setting of high-dimensional linear models with Gaussian noise, we investigate the possibility...
We propose inference procedures for partially identified population features for which the populatio...
It sometimes occurs that one or more components of the data exert a disproportionate influence on th...
AbstractThe traditional way to cope with missing data problems has been to combine the available dat...