Title of article :
ASkew–Gaussian Spatio–Temporal Process with Non–Stationary Correlation Structure
Author/Authors :
Barzegar, Zahra Department of Statistics - Faculty of Mathematical Sciences - Shahid Beheshti University, Iran , Rivaz, Firoozeh Department of Statistics - Faculty of Mathematical Sciences - Shahid Beheshti University, Iran , Jafari Khaledi, Majid Department of Statistics - Faculty of Mathematical Sciences - Tarbiat Modares University, Iran
Abstract :
This paper develops a new class of spatio-temporal process models that can
simultaneously capture skewness and non-stationarity. The proposed approach which
is based on using the closed skew-normal distribution in the low-rank representation of
stochastic processes, has several favorable properties. In particular, it greatly reduces
the dimension of the spatio-temporal latent variables and induces flexible correlation
structures. Bayesian analysis of the model is implemented through a Gibbs MCMC
algorithm which incorporates a version of the Kalman filtering algorithm. All fully
conditional posterior distributions have closed forms which show another advanta-
geous property of the proposed model. We demonstrate the eciency of our model
through an extensive simulation study and an application to a real data set comprised
of precipitation measurements.
Keywords :
Spatio-Temporal Data , Non-Stationarity , Low-Rank Models , Closed-Skew Normal Distribution