This paper examines the problem of identification and inference on a conditional moment condition model with missing data, with special focus on the case when the conditioning covariates are missing. We impose no assumption on the distribution of the missing data and we confront the missing data problem by using a worst case scenario approach. We characterize the sharp identified set and argue that this set is usually too complex to compute or to use for inference. Given this difficulty, we consider the construction of outer identified sets (i.e. supersets of the identified set) that are easier to compute and can still characterize the parameter of interest. Two different outer identification strategies are proposed. Both of these strategie...
AbstractMany statistical models, e.g. regression models, can be viewed as conditional moment restric...
Causal inference is often phrased as a missing data problem – for every unit, only the response to o...
Incomplete data often brings difficulty to estimations and inferences. A complete case (CC) analysis...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
In this paper I present a novel approach to inference in models where the partially identified param...
AbstractThe traditional way to cope with missing data problems has been to combine the available dat...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
This dissertation includes three papers on missing data problems where methods other than parametric...
SUMMARY. We consider methods for analyzing categorical regression models when some covariates (2) ar...
The model-based approach to inference from multivariate data with missing values is reviewed. Regres...
AbstractMany statistical models, e.g. regression models, can be viewed as conditional moment restric...
Causal inference is often phrased as a missing data problem – for every unit, only the response to o...
Incomplete data often brings difficulty to estimations and inferences. A complete case (CC) analysis...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
In this paper I present a novel approach to inference in models where the partially identified param...
AbstractThe traditional way to cope with missing data problems has been to combine the available dat...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
This dissertation includes three papers on missing data problems where methods other than parametric...
SUMMARY. We consider methods for analyzing categorical regression models when some covariates (2) ar...
The model-based approach to inference from multivariate data with missing values is reviewed. Regres...
AbstractMany statistical models, e.g. regression models, can be viewed as conditional moment restric...
Causal inference is often phrased as a missing data problem – for every unit, only the response to o...
Incomplete data often brings difficulty to estimations and inferences. A complete case (CC) analysis...