Motivated by modern observational studies, we introduce a class of functional models that expands nested and crossed designs. These models account for the natural inheritance of correlation structure from sampling design in studies where the fundamental sampling unit is a function or image. Inference is based on functional quadratics and their relationship with the underlying covariance structure of the latent processes. A computationally fast and scalable estimation procedure is developed for ultra-high dimensional data. Methods are illustrated in three examples: high-frequency accelerometer data for daily activity, pitch linguistic data for phonetic analysis, and EEG data for studying electrical brain activity during sleep
The aim of this dissertation is to create a unified and practical approach to the analysis of correl...
Highly structured data collected in a variety of biomedical applications such as electroencephalogra...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
Motivated by modern observational studies, we introduce a class of functional mod-els that expands n...
This thesis pertains to the uses of Functional Data Analysis and Machine Learning when analyzing hig...
The thesis investigates a specific type of functional data with multilevel structures induced by com...
We establish a fundamental equivalence between singular value decomposition (SVD) and functional pri...
Analyzing functional data often leads to finding common factors, for which functional principal comp...
This thesis provides novel methodologies for functional Principal Component Analysis of dependent t...
The basic observational unit in this paper is a function. Data are assumed to have a natural hierarc...
High dimensional data play an ever increasing role in the study of human health and behavior. Recent...
The extraordinary advancements in neuroscientific technology for brain recordings over the last deca...
Functional data analysis (FDA) plays an important role in analyzing function-valued data such as gro...
We propose fast and scalable statistical methods for the analysis of hundreds or thousands of high ...
This dissertation develops methodology and presents applications of functional data analysis tools u...
The aim of this dissertation is to create a unified and practical approach to the analysis of correl...
Highly structured data collected in a variety of biomedical applications such as electroencephalogra...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
Motivated by modern observational studies, we introduce a class of functional mod-els that expands n...
This thesis pertains to the uses of Functional Data Analysis and Machine Learning when analyzing hig...
The thesis investigates a specific type of functional data with multilevel structures induced by com...
We establish a fundamental equivalence between singular value decomposition (SVD) and functional pri...
Analyzing functional data often leads to finding common factors, for which functional principal comp...
This thesis provides novel methodologies for functional Principal Component Analysis of dependent t...
The basic observational unit in this paper is a function. Data are assumed to have a natural hierarc...
High dimensional data play an ever increasing role in the study of human health and behavior. Recent...
The extraordinary advancements in neuroscientific technology for brain recordings over the last deca...
Functional data analysis (FDA) plays an important role in analyzing function-valued data such as gro...
We propose fast and scalable statistical methods for the analysis of hundreds or thousands of high ...
This dissertation develops methodology and presents applications of functional data analysis tools u...
The aim of this dissertation is to create a unified and practical approach to the analysis of correl...
Highly structured data collected in a variety of biomedical applications such as electroencephalogra...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...