Advances and challenges in space-time modelling of natural events

Introduction to the Book: Space-Time Random Fields by J.M. Montero, E. Porcu, M. Schlather and G. Fernandez-Aviles.- Random Fields Defined on Hilbert Spaces by Hao Zhang.- Some Problems Relating Isotropic Covariance Functions by Michael L. Stein and Emilio Porcu.- Multivariate Random Fields and Robustness in Spatial Statistics by Marc G. Genton.- Spatial and Space-Time Extreme Value Theory for Random Fields by Martin Schlather.- Space-Time Second Order Properties of Random Fields by Emilio Porcu, J.Maria Montero and Gema Fernandez-Aviles.- Gaussian Markov Random Fields by Finn Lindgren.- A Journey through non Gaussian Random Fields by Denis Allard.- Space-Time Design for Gaussian Random Fields by Werner Muller.- Simulation of Stochastic Processes and Inference by Maria Dolores Ruiz Medina.- Space Time Point Processes by Thordis Thorarinsdottir.

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