Hierarchical data analysis is crucial in various fields for making discoveries. The linear mixed model is often used for training hierarchical data, but its parameter estimation is computationally expensive, especially with big data. Subsampling techniques have been developed to address this challenge. However, most existing subsampling methods assume homogeneous data and do not consider the possible heterogeneity in hierarchical data. To address this limitation, we develop a new approach called group-orthogonal subsampling (GOSS) for selecting informative subsets of hierarchical data that may exhibit heterogeneity. GOSS selects subdata with balanced data size among groups and combinatorial orthogonality within each group, resulting in subd...
The generality and easy programmability of modern sampling-based methods for maximisation of likelih...
The classical approach for estimating parameters in a non linear mixed model is to compute the maxim...
We propose a sub-structural niching method that fully exploits the problem decomposition capability ...
In many applications we are interested in finding clusters of data that share the same properties, l...
In the big data era, data are typically collected at massive scales and often carry complex structur...
A hierarchical sequential Gaussian cosimulation method is applied in this study for modeling the var...
This dissertation considers the problem of learning the underlying statistical structure of complex ...
In high-dimensional models that involve interactions, statisticians usually favor variable selection...
We consider a partially linear framework for modeling massive heterogeneous data. The major goal is ...
In the analysis of clustered or hierarchical data, a variety of statistical techniques can be applie...
In multilevel research, the data structure in the population is hierarchical, and the sample data ar...
In classical model fitting techinques, such as traditional Multiple Linear Regression models (MLR) ...
In recent years, subspace arrangements have become an increasingly popular class of mathematical obj...
Hierarchical beta process has found interesting applications in recent years. In this paper we prese...
A case is made for the use of hierarchical models in the analysis of generalization gradients. Hiera...
The generality and easy programmability of modern sampling-based methods for maximisation of likelih...
The classical approach for estimating parameters in a non linear mixed model is to compute the maxim...
We propose a sub-structural niching method that fully exploits the problem decomposition capability ...
In many applications we are interested in finding clusters of data that share the same properties, l...
In the big data era, data are typically collected at massive scales and often carry complex structur...
A hierarchical sequential Gaussian cosimulation method is applied in this study for modeling the var...
This dissertation considers the problem of learning the underlying statistical structure of complex ...
In high-dimensional models that involve interactions, statisticians usually favor variable selection...
We consider a partially linear framework for modeling massive heterogeneous data. The major goal is ...
In the analysis of clustered or hierarchical data, a variety of statistical techniques can be applie...
In multilevel research, the data structure in the population is hierarchical, and the sample data ar...
In classical model fitting techinques, such as traditional Multiple Linear Regression models (MLR) ...
In recent years, subspace arrangements have become an increasingly popular class of mathematical obj...
Hierarchical beta process has found interesting applications in recent years. In this paper we prese...
A case is made for the use of hierarchical models in the analysis of generalization gradients. Hiera...
The generality and easy programmability of modern sampling-based methods for maximisation of likelih...
The classical approach for estimating parameters in a non linear mixed model is to compute the maxim...
We propose a sub-structural niching method that fully exploits the problem decomposition capability ...