We consider modeling of angular or directional data viewed as a linear variable wrapped onto a unit circle. In particular, we focus on the spatio-temporal context, motivated by a collection of wave directions obtained as computer model output developed dynamically over a collection of spatial locations. We propose a novel wrapped skew Gaussian process which enriches the class of wrapped Gaussian process. The wrapped skew Gaussian process enables more flexible marginal distributions than the symmetric ones arising under the wrapped Gaussian process and it allows straightforward interpretation of parameters. We clarify that replication through time enables criticism of the wrapped process in favor of the wrapped skew process. We formulate a hierarchical model incorporating this process and show how to introduce appropriate latent variables in order to enable efficient fitting to dynamic spatial directional data. We also show how to implement kriging and forecasting under this model. We provide a simulation example as a proof of concept as well as a real data example. Both examples reveal consequential improvement in predictive performance for the wrapped skew Gaussian specification compared with the earlier wrapped Gaussian version.

The wrapped skew Gaussian process for analyzing spatio-temporal data / Mastrantonio, Gianluca; Gelfand, Alan E.; JONA LASINIO, Giovanna. - In: STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT. - ISSN 1436-3240. - STAMPA. - 30:8(2016), pp. 2231-2242. [10.1007/s00477-015-1163-9]

The wrapped skew Gaussian process for analyzing spatio-temporal data

MASTRANTONIO, GIANLUCA;JONA LASINIO, Giovanna
2016

Abstract

We consider modeling of angular or directional data viewed as a linear variable wrapped onto a unit circle. In particular, we focus on the spatio-temporal context, motivated by a collection of wave directions obtained as computer model output developed dynamically over a collection of spatial locations. We propose a novel wrapped skew Gaussian process which enriches the class of wrapped Gaussian process. The wrapped skew Gaussian process enables more flexible marginal distributions than the symmetric ones arising under the wrapped Gaussian process and it allows straightforward interpretation of parameters. We clarify that replication through time enables criticism of the wrapped process in favor of the wrapped skew process. We formulate a hierarchical model incorporating this process and show how to introduce appropriate latent variables in order to enable efficient fitting to dynamic spatial directional data. We also show how to implement kriging and forecasting under this model. We provide a simulation example as a proof of concept as well as a real data example. Both examples reveal consequential improvement in predictive performance for the wrapped skew Gaussian specification compared with the earlier wrapped Gaussian version.
2016
directional data; hierarchical model; Kriging; Markov chain Monte Carlo; space–time data; wave directions;environmental engineering; environmental chemistry; water science and technology; safety, risk, reliability and quality; 2300
01 Pubblicazione su rivista::01a Articolo in rivista
The wrapped skew Gaussian process for analyzing spatio-temporal data / Mastrantonio, Gianluca; Gelfand, Alan E.; JONA LASINIO, Giovanna. - In: STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT. - ISSN 1436-3240. - STAMPA. - 30:8(2016), pp. 2231-2242. [10.1007/s00477-015-1163-9]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/950758
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