Most papers on high-dimensional statistics are based on the assumption that none of the regressors are correlated with the regression error, namely, they are exogenous. Yet, endogeneity arises easily in high-dimensional regression due to a large pool of regressors and this causes the inconsistency of the penalized least-squares methods and possible false scientic discoveries. A necessary condition for model selection of a very general class of penalized regression methods is given, which allows us to prove formally the inconsistency claim. To cope with the possible endogeneity, we construct a novel penalized focussed generalized method of moments (FGMM) criterion function and oer a new optimization algorithm. The FGMM is not a smooth functi...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
In this paper, we study the performance of extremum estimators from the perspective of generalizatio...
This paper explores the uniformity of inference for parameters of interest in nonlinear models with ...
Most papers on high-dimensional statistics are based on the assumption that none of the regressors a...
Most papers on high-dimensional statistics are based on the assumption that none of the regressors a...
Econometric models based on observational data are often endogenous due to measurement error, autoco...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
We consider the problem of simultaneous variable selection and estimation of the corresponding regre...
Asymmetry along with heteroscedasticity or contamination often occurs with the growth of data dimens...
2015-04-08This dissertation addresses two challenging problems with respect to feature selection in ...
Advancements in information technology have enabled scientists to collect data of unprecedented size...
We investigate high-dimensional nonconvex penalized regression, where the number of covariates may g...
In this paper, we study the generalization ability (GA)---the ability of a model to predict outcomes...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
In this paper, we study the performance of extremum estimators from the perspective of generalizatio...
This paper explores the uniformity of inference for parameters of interest in nonlinear models with ...
Most papers on high-dimensional statistics are based on the assumption that none of the regressors a...
Most papers on high-dimensional statistics are based on the assumption that none of the regressors a...
Econometric models based on observational data are often endogenous due to measurement error, autoco...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
We consider the problem of simultaneous variable selection and estimation of the corresponding regre...
Asymmetry along with heteroscedasticity or contamination often occurs with the growth of data dimens...
2015-04-08This dissertation addresses two challenging problems with respect to feature selection in ...
Advancements in information technology have enabled scientists to collect data of unprecedented size...
We investigate high-dimensional nonconvex penalized regression, where the number of covariates may g...
In this paper, we study the generalization ability (GA)---the ability of a model to predict outcomes...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
In this paper, we study the performance of extremum estimators from the perspective of generalizatio...
This paper explores the uniformity of inference for parameters of interest in nonlinear models with ...