Analyzing functional data often leads to finding common factors, for which functional principal component analysis proves to be a useful tool to summarize and characterize the random variation in a function space. The representation in terms of eigenfunctions is optimal in the sense of L2 approximation. However, the eigenfunctions are not always directed towards an interesting and interpretable direction in the context of functional data and thus could obscure the underlying structure. To overcome such difficulty, an alternative to functional principal component analysis is proposed that produces directed components which may be more informative and easier to interpret. These structural components are similar to principal components, but ar...
While multivariate data analysis is concerned with data in the form of random vectors, functional da...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
In Functional Data Analysis (FDA), the underlying structure of a raw observation is functional and d...
Analyzing functional data often leads to finding common factors, for which functional principal comp...
Analyzing functional data often leads to finding common factors, for which functional principal comp...
Functional data analysis is intrinsically infinite dimensional; functional principal component analy...
In functional principal component analysis (PCA), we treat the data that consist of functions not of...
Advances in data collection and storage have tremendously increased the presence of functional data,...
Functional data analysis (FDA) plays an important role in analyzing function-valued data such as gro...
Modern computer technology has facilitated the presence of high-dimensional data, whose graphical re...
This thesis delves into the world of Functional Data Analysis (FDA) and its analog of Principal Comp...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
This master thesis discusses selected topics of Functional Data Analysis (FDA). FDA deals with the r...
We address the problem of dimension reduction for time series of functional data (Xt:t∈Z). Such func...
With the advance of modern technology, more and more data are being recorded continuously during a t...
While multivariate data analysis is concerned with data in the form of random vectors, functional da...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
In Functional Data Analysis (FDA), the underlying structure of a raw observation is functional and d...
Analyzing functional data often leads to finding common factors, for which functional principal comp...
Analyzing functional data often leads to finding common factors, for which functional principal comp...
Functional data analysis is intrinsically infinite dimensional; functional principal component analy...
In functional principal component analysis (PCA), we treat the data that consist of functions not of...
Advances in data collection and storage have tremendously increased the presence of functional data,...
Functional data analysis (FDA) plays an important role in analyzing function-valued data such as gro...
Modern computer technology has facilitated the presence of high-dimensional data, whose graphical re...
This thesis delves into the world of Functional Data Analysis (FDA) and its analog of Principal Comp...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
This master thesis discusses selected topics of Functional Data Analysis (FDA). FDA deals with the r...
We address the problem of dimension reduction for time series of functional data (Xt:t∈Z). Such func...
With the advance of modern technology, more and more data are being recorded continuously during a t...
While multivariate data analysis is concerned with data in the form of random vectors, functional da...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
In Functional Data Analysis (FDA), the underlying structure of a raw observation is functional and d...