The optimal subsampling is an statistical methodology for generalized linear models (GLMs) to make inference quickly about parameter estimation in massive data regression. Existing literature only considers bounded covariates. In this paper, the asymptotic normality of the subsampling M-estimator based on the Fisher information matrix is obtained. Then, we study the asymptotic properties of subsampling estimators of unbounded GLMs with nonnatural links, including conditional asymptotic properties and unconditional asymptotic properties
Reduced-rank regression is a dimensionality reduction method with many applications. The asymptotic ...
This paper discusses inference in self-exciting threshold autoregressive (SETAR) models. Of main int...
A general approach to constructing confidence intervals by subsampling was presented in Politis and ...
Subsampling is a computationally effective approach to extract information from massive data sets wh...
To tackle massive data, subsampling is a practical approach to select the more informative data poin...
Kim and Pollard (Annals of Statistics, 18 (1990) 191?219) showed that a general class of M-estimator...
Kim and Pollard (1990) showed that a general class of M-estimators converge at rate nl/3 rather than...
Indiana University-Purdue University Indianapolis (IUPUI)A significant hurdle for analyzing big data...
Big data is ubiquitous in practices, and it has also led to heavy computation burden. To reduce the ...
We consider asymptotic theory for the maximum likelihood estimator in the generalized linear model w...
The limiting distribution of M-estimators of the regression parameter in linear models is derived un...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
Bayesian Generalized Nonlinear Models (BGNLM) offer a flexible alternative to GLM while still provid...
Subsampling and the m out of n bootstrap have been suggested in the literature as methods for carryi...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
Reduced-rank regression is a dimensionality reduction method with many applications. The asymptotic ...
This paper discusses inference in self-exciting threshold autoregressive (SETAR) models. Of main int...
A general approach to constructing confidence intervals by subsampling was presented in Politis and ...
Subsampling is a computationally effective approach to extract information from massive data sets wh...
To tackle massive data, subsampling is a practical approach to select the more informative data poin...
Kim and Pollard (Annals of Statistics, 18 (1990) 191?219) showed that a general class of M-estimator...
Kim and Pollard (1990) showed that a general class of M-estimators converge at rate nl/3 rather than...
Indiana University-Purdue University Indianapolis (IUPUI)A significant hurdle for analyzing big data...
Big data is ubiquitous in practices, and it has also led to heavy computation burden. To reduce the ...
We consider asymptotic theory for the maximum likelihood estimator in the generalized linear model w...
The limiting distribution of M-estimators of the regression parameter in linear models is derived un...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
Bayesian Generalized Nonlinear Models (BGNLM) offer a flexible alternative to GLM while still provid...
Subsampling and the m out of n bootstrap have been suggested in the literature as methods for carryi...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
Reduced-rank regression is a dimensionality reduction method with many applications. The asymptotic ...
This paper discusses inference in self-exciting threshold autoregressive (SETAR) models. Of main int...
A general approach to constructing confidence intervals by subsampling was presented in Politis and ...