Determining influential factors in spatio-temporal models
2019 (English)In: Proceedings of 18th Applied Stochastic Models and Data Analysis International Conference with the Demographics 2019 Workshop, Florence, Italy: 11-14 June, 2019 / [ed] Christos H. Skiadas, ISAST: International Society for the Advancement of Science and Technology , 2019, p. 547-558Conference paper, Published paper (Refereed)
Abstract [en]
In various areas of modern statistical applications such as in Environmetrics, Image Processing, Epidemiology, Biology, Astronomy, Industrial Mathematics, and many others, we encounter challenges of analyzing massive data sets which are spatially observable, often presented as maps, and temporally correlated. The analysis of such data is usually performed with the goal to obtain both the spatial interpolation and the temporal prediction. In both cases, the data-generating process has to be fitted by an appropriate stochastic model which should have two main properties: (i) it should provide a good fit to the true underlying model; (ii) its structure could not be too complicated avoiding considerable estimation error appeared by fitting the model to real data. Consequently, achieving the reasonable trade-off between the model uncertainty and the parameter uncertainty is one of the most difficult questions of modern statistical theory.
We deal with this problem in the case of general spatio-temporal models by applying the LOESS predictor for both the spatial interpolation and the temporal prediction. The number of closest neighboring regions to be used in its construction is determined by cross-validation. We also discuss the computational aspects in the case of large-dimensional data and apply the theoretical findings to real data consisting of the number of influenza cases observed in the south of Germany.
Place, publisher, year, edition, pages
ISAST: International Society for the Advancement of Science and Technology , 2019. p. 547-558
Keywords [en]
hierarchical model, latent process, LOESS predictor, cross-validation, Kalman filter.
National Category
Probability Theory and Statistics
Research subject
Mathematics/Applied Mathematics
Identifiers
URN: urn:nbn:se:oru:diva-90479ISBN: 978-618-5180-33-1 (electronic)OAI: oai:DiVA.org:oru-90479DiVA, id: diva2:1537615
Conference
18th conference of the Applied Stochastic Models and Data Analysis (ASMDA2019), Florence, Italy, June 11-14, 2019
Funder
Sida - Swedish International Development Cooperation Agency2021-03-162021-03-162021-03-18Bibliographically approved