The statistical matching problem involves the integration of multiple datasets where some variables are not observed jointly. This missing data pattern leaves most statistical models unidentifiable. Statistical inference is still possible when operating under the framework of partially identified models, where the goal is to bound the parameters rather than to estimate them precisely. In many matching problems, developing feasible bounds on the parameters is equivalent to finding the set of positive-definite completions of a partially specified covariance matrix. Existing methods for characterising the set of possible completions do not extend to high-dimensional problems. A Gibbs sampler to draw from the set of possible completions is prop...
This paper considers the problem of inference for partially identified econo-metric models. The clas...
This paper provides computationally intensive, yet feasible methods for in-ference in a very general...
This paper studies asymptotic properties of likelihood-based estimators and test statistics for mode...
AbstractThe statistical matching problem involves the integration of multiple datasets where some va...
The statistical matching problem involves the integration of multiple datasets where some variables ...
The main target of statistical matching is to make inference on variables observed in different sour...
AbstractThe traditional way to cope with missing data problems has been to combine the available dat...
The goal of statistical matching is the estimation of a joint distribution having observed only samp...
We consider the one-to-one matching models with transfers of Choo and Siow (2006) and Galichon and S...
Partially identified models commonly arise in enormous fields, including but not limited to economic...
Motivated by Manski and Tamer (2002) and especially their partial identification analysis of the re...
We develop the first statistical matching micro approach reflecting the natural uncer- tainty arisi...
We study partial identification of the preference parameters in the one-to-one matching model with p...
Statistical matching is a technique for integrating two or more data sets when information available...
Identification in econometric models maps prior assumptions and the data to information about a para...
This paper considers the problem of inference for partially identified econo-metric models. The clas...
This paper provides computationally intensive, yet feasible methods for in-ference in a very general...
This paper studies asymptotic properties of likelihood-based estimators and test statistics for mode...
AbstractThe statistical matching problem involves the integration of multiple datasets where some va...
The statistical matching problem involves the integration of multiple datasets where some variables ...
The main target of statistical matching is to make inference on variables observed in different sour...
AbstractThe traditional way to cope with missing data problems has been to combine the available dat...
The goal of statistical matching is the estimation of a joint distribution having observed only samp...
We consider the one-to-one matching models with transfers of Choo and Siow (2006) and Galichon and S...
Partially identified models commonly arise in enormous fields, including but not limited to economic...
Motivated by Manski and Tamer (2002) and especially their partial identification analysis of the re...
We develop the first statistical matching micro approach reflecting the natural uncer- tainty arisi...
We study partial identification of the preference parameters in the one-to-one matching model with p...
Statistical matching is a technique for integrating two or more data sets when information available...
Identification in econometric models maps prior assumptions and the data to information about a para...
This paper considers the problem of inference for partially identified econo-metric models. The clas...
This paper provides computationally intensive, yet feasible methods for in-ference in a very general...
This paper studies asymptotic properties of likelihood-based estimators and test statistics for mode...