Computing estimates in functional principal component analysis (FPCA) from discrete data is usually based on the approximation of sample curves in terms of a basis (splines, wavelets, trigonometric functions, etc.) and a geometrical structure in the data space (L2 spaces, Sobolev spaces, etc.). Until now, the computational efforts have been focused in developing ad hoc algorithms to approximate those estimates by previously selecting an efficient approximating technique and a convenient geometrical structure. The main goal of this paper consists of establishing a procedure to formulate the algorithm for computing estimates of FPCA under general settings. The resulting algorithm is based on the classic multivariate PCA of a certain r...
Principal Component Analysis (PCA) is one widely used data processing technique in application, espe...
Dimension reduction methods for functional data have been avidly studied in recent years. However, e...
IPS005: Recent Advances in Functional Data AnalysisPrincipal component analysis (PCA) is an importan...
In functional principal component analysis (PCA), we treat the data that consist of functions not of...
Functional principal component analysis (FPCA) is a dimension reduction technique that explains the ...
This master thesis discusses selected topics of Functional Data Analysis (FDA). FDA deals with the r...
Functional principal components (FPC’s) provide the most important and most extensively used tool f...
Two existing approaches to functional principal components analysis (FPCA) are due to Rice and Silve...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
Two existing approaches to functional principal components analysis (FPCA) are due to Rice and Silve...
This thesis delves into the world of Functional Data Analysis (FDA) and its analog of Principal Comp...
Functional principal component analysis has become the most important dimension reduction technique ...
In this paper, we address the problem of dimension reduction for sequentially observed functional d...
Functional data analysis is intrinsically infinite dimensional; functional principal component analy...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
Principal Component Analysis (PCA) is one widely used data processing technique in application, espe...
Dimension reduction methods for functional data have been avidly studied in recent years. However, e...
IPS005: Recent Advances in Functional Data AnalysisPrincipal component analysis (PCA) is an importan...
In functional principal component analysis (PCA), we treat the data that consist of functions not of...
Functional principal component analysis (FPCA) is a dimension reduction technique that explains the ...
This master thesis discusses selected topics of Functional Data Analysis (FDA). FDA deals with the r...
Functional principal components (FPC’s) provide the most important and most extensively used tool f...
Two existing approaches to functional principal components analysis (FPCA) are due to Rice and Silve...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
Two existing approaches to functional principal components analysis (FPCA) are due to Rice and Silve...
This thesis delves into the world of Functional Data Analysis (FDA) and its analog of Principal Comp...
Functional principal component analysis has become the most important dimension reduction technique ...
In this paper, we address the problem of dimension reduction for sequentially observed functional d...
Functional data analysis is intrinsically infinite dimensional; functional principal component analy...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
Principal Component Analysis (PCA) is one widely used data processing technique in application, espe...
Dimension reduction methods for functional data have been avidly studied in recent years. However, e...
IPS005: Recent Advances in Functional Data AnalysisPrincipal component analysis (PCA) is an importan...