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dc.contributor.authorLenzi, Amanda
dc.contributor.authorCastruccio, Stefano
dc.contributor.authorRue, Haavard
dc.contributor.authorGenton, Marc G.
dc.date.accessioned2019-12-18T13:17:45Z
dc.date.available2019-12-18T13:17:45Z
dc.date.issued2019-07-16
dc.identifier.urihttp://hdl.handle.net/10754/660681.1
dc.description.abstractEnvironmental processes resolved at a sufficiently small scale in space and time will inevitably display non-stationary behavior. Such processes are both challenging to model and computationally expensive when the data size is large. Instead of modeling the global non-stationarity explicitly, local models can be applied to disjoint regions of the domain. The choice of the size of these regions is dictated by a bias-variance trade-off; large regions will have smaller variance and larger bias, whereas small regions will have higher variance and smaller bias. From both the modeling and computational point of view, small regions are preferable to better accommodate the non-stationarity. However, in practice, large regions are necessary to control the variance. We propose a novel Bayesian three-step approach that allows for smaller regions without compromising the increase of the variance that would follow. We are able to propagate the uncertainty from one step to the next without issues caused by reusing the data. The improvement in inference also results in improved prediction, as our simulated example shows. We illustrate this new approach on a data set of simulated high-resolution wind speed data over Saudi Arabia.
dc.description.sponsorshipThis publication is based on research supported by the King Abdullah University of Science and Technology (KAUST) Office of Sponsored Research (OSR) under Award No: OSR-2018-CRG7-3742.
dc.publisherarXiv
dc.relation.urlhttps://arxiv.org/pdf/1907.06932
dc.rightsArchived with thanks to arXiv
dc.titleImproving Bayesian Local Spatial Models in Large Data Sets
dc.typePreprint
dc.contributor.departmentComputer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division
dc.contributor.departmentStatistics Program
dc.eprint.versionPre-print
dc.contributor.institutionDepartment of Applied and Computational Mathematics and Statistics, University of Notre Dame, Notre Dame, IN 46556, USA.
dc.identifier.arxivid1907.06932
kaust.personLenzi, Amanda
kaust.personRue, Haavard
kaust.personGenton, Marc G.
refterms.dateFOA2019-12-18T13:19:09Z
kaust.acknowledged.supportUnitOffice of Sponsored Research (OSR)


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