This paper focuses on the analysis of spatially correlated functional data. The between-curve cor-relation is modeled by correlating functional principal component scores of the functional data. We propose a Spatial Principal Analysis by Conditional Expectation framework to explicitly estimate spa-tial correlations and reconstruct individual curves. This approach works even when the observed data per curve are sparse. Assuming spatial stationarity, empirical spatial correlations are calculated as the ratio of eigenvalues of the smoothed covariance surface Cov(Xi(s), Xi(t)) and cross-covariance surface Cov(Xi(s), Xj(t)) at locations indexed by i and j. Then a anisotropy Matérn spatial correlation model is fit to empirical correlations. Fina...
<p>In many atmospheric and earth sciences, it is of interest to identify dominant spatial patterns o...
This article considers critically how one of the oldest and most widely applied statistical methods,...
This article considers critically how one of the oldest and most widely applied statistical methods,...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
While multivariate data analysis is concerned with data in the form of random vectors, functional da...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
In this paper we discuss and compare two clustering strategies: a hierarchical clustering and a dyn...
Functional data showing spatial dependence structure occur in many applied fields. For example, in m...
Classification problems of functional data arise naturally in many applications. Several approaches...
<p>We develop a functional conditional autoregressive (CAR) model for spatially correlated data for ...
This work focuses on functional data presenting spatial dependence. The spatial autocorrelation of s...
Spatial, amplitude and phase variations in spatial functional data are confounded. Conclusions from ...
Spatial, amplitude and phase variations in spatial functional data are confounded. Conclusions from ...
Spatial, amplitude and phase variations in spatial functional data are confounded. Conclusions from ...
Within the frame of the linear model of coregionalization, is paper sets up equations relating the v...
<p>In many atmospheric and earth sciences, it is of interest to identify dominant spatial patterns o...
This article considers critically how one of the oldest and most widely applied statistical methods,...
This article considers critically how one of the oldest and most widely applied statistical methods,...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
While multivariate data analysis is concerned with data in the form of random vectors, functional da...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
In this paper we discuss and compare two clustering strategies: a hierarchical clustering and a dyn...
Functional data showing spatial dependence structure occur in many applied fields. For example, in m...
Classification problems of functional data arise naturally in many applications. Several approaches...
<p>We develop a functional conditional autoregressive (CAR) model for spatially correlated data for ...
This work focuses on functional data presenting spatial dependence. The spatial autocorrelation of s...
Spatial, amplitude and phase variations in spatial functional data are confounded. Conclusions from ...
Spatial, amplitude and phase variations in spatial functional data are confounded. Conclusions from ...
Spatial, amplitude and phase variations in spatial functional data are confounded. Conclusions from ...
Within the frame of the linear model of coregionalization, is paper sets up equations relating the v...
<p>In many atmospheric and earth sciences, it is of interest to identify dominant spatial patterns o...
This article considers critically how one of the oldest and most widely applied statistical methods,...
This article considers critically how one of the oldest and most widely applied statistical methods,...