spBayesfor Large Univariate and Multivariate Point-Referenced Spatio-Temporal Data Models
Author(s) -
Andrew O. Finley,
Sudipto Banerjee,
Alan E. Gelfand
Publication year - 2015
Publication title -
journal of statistical software
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 7.636
H-Index - 145
ISSN - 1548-7660
DOI - 10.18637/jss.v063.i13
Subject(s) - computer science , univariate , flexibility (engineering) , scalability , computation , usability , class (philosophy) , multivariate statistics , process (computing) , data mining , point (geometry) , r package , algorithm , theoretical computer science , computational science , mathematics , machine learning , artificial intelligence , programming language , statistics , database , geometry , human–computer interaction
In this paper we detail the reformulation and rewrite of core functions in the spBayes R package. These efforts have focused on improving computational efficiency, flexibility, and usability for point-referenced data models. Attention is given to algorithm and computing developments that result in improved sampler convergence rate and efficiency by reducing parameter space; decreased sampler run-time by avoiding expensive matrix computations, and; increased scalability to large datasets by implementing a class of predictive process models that attempt to overcome computational hurdles by representing spatial processes in terms of lower-dimensional realizations. Beyond these general computational improvements for existing model functions, we detail new functions for modeling data indexed in both space and time. These new functions implement a class of dynamic spatio-temporal models for settings where space is viewed as continuous and time is taken as discrete.
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