Classical multivariate principal component analysis has been extended to functional data and termed functional principal component analysis (FPCA). Most existing FPCA approaches do not accommodate covariate information, and it is the goal of this paper to develop two methods that do. In the first approach, both the mean and covariance functions depend on the covariate $Z$ and time scale $t$ while in the second approach only the mean function depends on the covariate $Z$. Both new approaches accommodate additional measurement errors and functional data sampled at regular time grids as well as sparse longitudinal data sampled at irregular time grids. The first approach to fully ad...
The aim of this dissertation is to create a unified and practical approach to the analysis of correl...
Functional data analysis (FDA) addresses the analysis of information on curves or functions. Example...
This thesis delves into the world of Functional Data Analysis (FDA) and its analog of Principal Comp...
Classical multivariate principal component analysis has been extended to functional data an...
In functional principal component analysis (PCA), we treat the data that consist of functions not of...
With the advance of modern technology, more and more data are being recorded continuously during a t...
We propose a nonparametric method to perform functional principal components analysis for the case o...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
grants DMS98-03637, DMS99-71602, DMS02-04869, DMS03-54448 and DMS04-06430. We wish to thank an Assoc...
[[sponsorship]]統計科學研究所[[note]]已出版;[SCI];有審查制度;具代表性[[note]]http://gateway.isiknowledge.com/gateway/Ga...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
We introduce a novel method of principal component analysis for data with varying domain lengths for...
In Functional Data Analysis (FDA), the underlying structure of a raw observation is functional and d...
Principal Differential Analysis deals with functional data. The word functional data refers to a col...
Functional principal component analysis (FPCA) has played an important role in the development of fu...
The aim of this dissertation is to create a unified and practical approach to the analysis of correl...
Functional data analysis (FDA) addresses the analysis of information on curves or functions. Example...
This thesis delves into the world of Functional Data Analysis (FDA) and its analog of Principal Comp...
Classical multivariate principal component analysis has been extended to functional data an...
In functional principal component analysis (PCA), we treat the data that consist of functions not of...
With the advance of modern technology, more and more data are being recorded continuously during a t...
We propose a nonparametric method to perform functional principal components analysis for the case o...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
grants DMS98-03637, DMS99-71602, DMS02-04869, DMS03-54448 and DMS04-06430. We wish to thank an Assoc...
[[sponsorship]]統計科學研究所[[note]]已出版;[SCI];有審查制度;具代表性[[note]]http://gateway.isiknowledge.com/gateway/Ga...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
We introduce a novel method of principal component analysis for data with varying domain lengths for...
In Functional Data Analysis (FDA), the underlying structure of a raw observation is functional and d...
Principal Differential Analysis deals with functional data. The word functional data refers to a col...
Functional principal component analysis (FPCA) has played an important role in the development of fu...
The aim of this dissertation is to create a unified and practical approach to the analysis of correl...
Functional data analysis (FDA) addresses the analysis of information on curves or functions. Example...
This thesis delves into the world of Functional Data Analysis (FDA) and its analog of Principal Comp...