Spatial, amplitude and phase variations in spatial functional data are confounded. Conclusions from the popular functional trace-variogram, which quantifies spatial variation, can be misleading when analyzing misaligned functional data with phase variation. To remedy this, we describe a framework that extends amplitude-phase separation methods in functional data to the spatial setting, with a view towards performing clustering and spatial prediction. We propose a decomposition of the trace-variogram into amplitude and phase components, and quantify how spatial correlations between functional observations manifest in their respective amplitude and phase. This enables us to generate separate amplitude and phase clustering methods for spatial ...
The performance of two clustering strategies for spatially correlated functional data based on the ...
In several environmental applications data are functions of time, essentially continuous, observed a...
We address the problem of predicting spatially dependent functional data belonging to a Hilbert spac...
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 ...
In this paper we discuss and compare two clustering strategies: a hierarchical clustering and a dyn...
Classification problems of functional data arise naturally in many applications. Several approaches...
"\"In this paper we propose an extended version of a model-based strategy for clustering spatial fun...
The performance of two clustering strategies for spatially correlated functional data based on the s...
Registration of multivariate functional data involves handling of both cross-component and cross-obs...
Classification problems of functional data arise naturally in many applications. Several approaches...
Registration of multivariate functional data involves handling of both cross-component and cross-obs...
Registration of multivariate functional data involves handling of both cross-component and cross-obs...
The performance of two clustering strategies for spatially correlated functional data based on the ...
Observing complete functions as a result of random experiments is nowadays possible by the developme...
The performance of two clustering strategies for spatially correlated functional data based on the ...
In several environmental applications data are functions of time, essentially continuous, observed a...
We address the problem of predicting spatially dependent functional data belonging to a Hilbert spac...
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 ...
In this paper we discuss and compare two clustering strategies: a hierarchical clustering and a dyn...
Classification problems of functional data arise naturally in many applications. Several approaches...
"\"In this paper we propose an extended version of a model-based strategy for clustering spatial fun...
The performance of two clustering strategies for spatially correlated functional data based on the s...
Registration of multivariate functional data involves handling of both cross-component and cross-obs...
Classification problems of functional data arise naturally in many applications. Several approaches...
Registration of multivariate functional data involves handling of both cross-component and cross-obs...
Registration of multivariate functional data involves handling of both cross-component and cross-obs...
The performance of two clustering strategies for spatially correlated functional data based on the ...
Observing complete functions as a result of random experiments is nowadays possible by the developme...
The performance of two clustering strategies for spatially correlated functional data based on the ...
In several environmental applications data are functions of time, essentially continuous, observed a...
We address the problem of predicting spatially dependent functional data belonging to a Hilbert spac...