To tackle massive data, subsampling is a practical approach to select the more informative data points. However, when responses are expensive to measure, developing efficient subsampling schemes is challenging, and an optimal sampling approach under measurement constraints was developed to meet this challenge. This method uses the inverses of optimal sampling probabilities to reweight the objective function, which assigns smaller weights to the more important data points. Thus the estimation efficiency of the resulting estimator can be improved. In this paper, we propose an unweighted estimating procedure based on optimal subsamples to obtain a more efficient estimator. We obtain the unconditional asymptotic distribution of the estimator vi...
The recently developed subsampling methodology has been shown to be valid for the construction of la...
A general approach to constructing confidence intervals by subsampling was presented in Politis and ...
We propose Subsampling MCMC, a Markov Chain Monte Carlo (MCMC) framework where the likelihood functi...
Subsampling is a computationally effective approach to extract information from massive data sets wh...
Big data is ubiquitous in practices, and it has also led to heavy computation burden. To reduce the ...
The optimal subsampling is an statistical methodology for generalized linear models (GLMs) to make i...
Indiana University-Purdue University Indianapolis (IUPUI)A significant hurdle for analyzing big data...
228 pagesIn the first part of this work, we propose a novel efficient sampling method for measuremen...
The bootstrap is a widely used procedure for statistical inference because of its simplicity and att...
The bootstrap is a widely used procedure for statistical inference because of its simplicity and att...
Indiana University-Purdue University Indianapolis (IUPUI)There are two computational bottlenecks for...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
In the time of Big Data, training complex models on large-scale data sets is challenging, making it ...
Purdue University West Lafayette (PUWL)For massive data analysis, the computational bottlenecks exis...
The recently developed subsampling methodology has been shown to be valid for the construction of la...
A general approach to constructing confidence intervals by subsampling was presented in Politis and ...
We propose Subsampling MCMC, a Markov Chain Monte Carlo (MCMC) framework where the likelihood functi...
Subsampling is a computationally effective approach to extract information from massive data sets wh...
Big data is ubiquitous in practices, and it has also led to heavy computation burden. To reduce the ...
The optimal subsampling is an statistical methodology for generalized linear models (GLMs) to make i...
Indiana University-Purdue University Indianapolis (IUPUI)A significant hurdle for analyzing big data...
228 pagesIn the first part of this work, we propose a novel efficient sampling method for measuremen...
The bootstrap is a widely used procedure for statistical inference because of its simplicity and att...
The bootstrap is a widely used procedure for statistical inference because of its simplicity and att...
Indiana University-Purdue University Indianapolis (IUPUI)There are two computational bottlenecks for...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
In the time of Big Data, training complex models on large-scale data sets is challenging, making it ...
Purdue University West Lafayette (PUWL)For massive data analysis, the computational bottlenecks exis...
The recently developed subsampling methodology has been shown to be valid for the construction of la...
A general approach to constructing confidence intervals by subsampling was presented in Politis and ...
We propose Subsampling MCMC, a Markov Chain Monte Carlo (MCMC) framework where the likelihood functi...