When functional data come as multiple curves per subject, characterizing the source of variations is not a trivial problem. The complexity of the problem goes deeper when there is phase variation in addition to amplitude variation. We consider clustering problem with multivariate functional data that have phase variations among the functional variables. We propose a conditional subject-specific warping framework in order to extract relevant features for clustering. Using multivariate growth curves of various parts of the body as a motivating example, we demonstrate the effectiveness of the proposed approach. The found clusters have individuals who show different relative growth patterns among different parts of the body
A functional clustering (FC) method, "k"-centres FC, for longitudinal data is proposed. The "k"-cent...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
For longitudinal studies with multivariate observations, we propose statistical methods to identify ...
As an important exploratory analysis, curves of similar shape are often classified into groups, whic...
Functional data analysis aims to provide statistical inference for stochastic processes defined over...
The abundance of functional observations in scientific endeavors has led to a significant developmen...
Multivariate functional data often present theoretical and practical complications which are not fou...
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
The problem of detecting clusters is a common issue in the analysis of functional data and some int...
Our work is motivated by an analysis of elephant seal dive profiles which we view as functional data...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
This thesis provides novel methodologies for functional Principal Component Analysis of dependent t...
Phase variation in functional data obscures the true amplitude variation when a typical cross-sectio...
Functional data analysis is a powerful statistical framework to analyze high dimensional data by vie...
For longitudinal studies with multivariate observations, we propose statistical methods to identify ...
A functional clustering (FC) method, "k"-centres FC, for longitudinal data is proposed. The "k"-cent...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
For longitudinal studies with multivariate observations, we propose statistical methods to identify ...
As an important exploratory analysis, curves of similar shape are often classified into groups, whic...
Functional data analysis aims to provide statistical inference for stochastic processes defined over...
The abundance of functional observations in scientific endeavors has led to a significant developmen...
Multivariate functional data often present theoretical and practical complications which are not fou...
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
The problem of detecting clusters is a common issue in the analysis of functional data and some int...
Our work is motivated by an analysis of elephant seal dive profiles which we view as functional data...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
This thesis provides novel methodologies for functional Principal Component Analysis of dependent t...
Phase variation in functional data obscures the true amplitude variation when a typical cross-sectio...
Functional data analysis is a powerful statistical framework to analyze high dimensional data by vie...
For longitudinal studies with multivariate observations, we propose statistical methods to identify ...
A functional clustering (FC) method, "k"-centres FC, for longitudinal data is proposed. The "k"-cent...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
For longitudinal studies with multivariate observations, we propose statistical methods to identify ...