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spTimer: Spatio-Temporal Bayesian Modeling Using R [推广有奖]

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ReneeBK 发表于 2015-3-20 09:11:46 |AI写论文

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Authors:

Khandoker Shuvo Bakar, Sujit K. Sahu

Title:

[download]
(603)
spTimer: Spatio-Temporal Bayesian Modeling Using R

Reference:

Vol. 63, Issue 15, Feb 2015Submitted 2012-06-13, Accepted 2014-11-03

Type:

Article

Abstract:

Hierarchical Bayesian modeling of large point-referenced space-time data is increasingly becoming feasible in many environmental applications due to the recent advances in both statistical methodology and computation power. Implementation of these methods using the Markov chain Monte Carlo (MCMC) computational techniques, however, requires development of problem-specific and user-written computer code, possibly in a low-level language. This programming requirement is hindering the widespread use of the Bayesian model-based methods among practitioners and, hence there is an urgent need to develop high-level software that can analyze large data sets rich in both space and time. This paper develops the package spTimer for hierarchical Bayesian modeling of stylized environmental space-time monitoring data as a contributed software package in the R language that is fast becoming a very popular statistical computing platform. The package is able to fit, spatially and temporally predict large amounts of space-time data using three recently developed Bayesian models. The user is given control over many options regarding covariance function selection, distance calculation, prior selection and tuning of the implemented MCMC algorithms, although suitable defaults are provided. The package has many other attractive features such as on the fly transformations and an ability to spatially predict temporally aggregated summaries on the original scale, which saves the problem of storage when using MCMC methods for large datasets. A simulation example, with more than a million observations, and a real life data example are used to validate the underlying code and to illustrate the software capabilities.

Paper:

[download]
(603)
spTimer: Spatio-Temporal Bayesian Modeling Using R
(application/pdf, 1.1 MB)

Supplements:

[download]
(60)
spTimer_2.0-0.tar.gz: R source package
(application/x-gzip, 364.3 KB)

[download]
(65)
v63i15.R: R example code from the paper
(application/octet-stream, 32.8 KB)

Resources:

BibTeX | OAI

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关键词:Modeling temporal Bayesian model Bayes becoming methods recent chain power

沙发
ydb8848 发表于 2015-3-20 09:22:50

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Kamize 学生认证  发表于 2015-4-23 00:19:04
楼主,求第三个附件,下载不了

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