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A Case Study Competition Among Methods for Analyzing Large Spatial Data
by
Nychka, Douglas W.
, Gerber, Florian
, Guhaniyogi, Rajarshi
, Finley, Andrew O.
, Gramacy, Robert B.
, Hammerling, Dorit
, Heaton, Matthew J.
, Furrer, Reinhard
, Katzfuss, Matthias
, Guinness, Joseph
, Datta, Abhirup
, Sun, Furong
, Lindgren, Finn
, Zammit-Mangion, Andrew
in
Agriculture
/ Big data
/ Biostatistics
/ Case studies
/ Competition
/ Computation
/ Computer simulation
/ Data analysis
/ data collection
/ diagnostic techniques
/ Gaussian process
/ Geospatial data
/ Health Sciences
/ Mathematics and Statistics
/ Medicine
/ Methods
/ Microprocessors
/ Monitoring/Environmental Analysis
/ Multiprocessing
/ normal distribution
/ prediction
/ Predictions
/ Spatial analysis
/ Spatial data
/ Statistics
/ Statistics for Life Sciences
2019
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A Case Study Competition Among Methods for Analyzing Large Spatial Data
by
Nychka, Douglas W.
, Gerber, Florian
, Guhaniyogi, Rajarshi
, Finley, Andrew O.
, Gramacy, Robert B.
, Hammerling, Dorit
, Heaton, Matthew J.
, Furrer, Reinhard
, Katzfuss, Matthias
, Guinness, Joseph
, Datta, Abhirup
, Sun, Furong
, Lindgren, Finn
, Zammit-Mangion, Andrew
in
Agriculture
/ Big data
/ Biostatistics
/ Case studies
/ Competition
/ Computation
/ Computer simulation
/ Data analysis
/ data collection
/ diagnostic techniques
/ Gaussian process
/ Geospatial data
/ Health Sciences
/ Mathematics and Statistics
/ Medicine
/ Methods
/ Microprocessors
/ Monitoring/Environmental Analysis
/ Multiprocessing
/ normal distribution
/ prediction
/ Predictions
/ Spatial analysis
/ Spatial data
/ Statistics
/ Statistics for Life Sciences
2019
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Do you wish to request the book?
A Case Study Competition Among Methods for Analyzing Large Spatial Data
by
Nychka, Douglas W.
, Gerber, Florian
, Guhaniyogi, Rajarshi
, Finley, Andrew O.
, Gramacy, Robert B.
, Hammerling, Dorit
, Heaton, Matthew J.
, Furrer, Reinhard
, Katzfuss, Matthias
, Guinness, Joseph
, Datta, Abhirup
, Sun, Furong
, Lindgren, Finn
, Zammit-Mangion, Andrew
in
Agriculture
/ Big data
/ Biostatistics
/ Case studies
/ Competition
/ Computation
/ Computer simulation
/ Data analysis
/ data collection
/ diagnostic techniques
/ Gaussian process
/ Geospatial data
/ Health Sciences
/ Mathematics and Statistics
/ Medicine
/ Methods
/ Microprocessors
/ Monitoring/Environmental Analysis
/ Multiprocessing
/ normal distribution
/ prediction
/ Predictions
/ Spatial analysis
/ Spatial data
/ Statistics
/ Statistics for Life Sciences
2019
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A Case Study Competition Among Methods for Analyzing Large Spatial Data
Journal Article
A Case Study Competition Among Methods for Analyzing Large Spatial Data
2019
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Overview
The Gaussian process is an indispensable tool for spatial data analysts. The onset of the “big data” era, however, has lead to the traditional Gaussian process being computationally infeasible for modern spatial data. As such, various alternatives to the full Gaussian process that are more amenable to handling big spatial data have been proposed. These modern methods often exploit low-rank structures and/or multi-core and multi-threaded computing environments to facilitate computation. This study provides, first, an introductory overview of several methods for analyzing large spatial data. Second, this study describes the results of a predictive competition among the described methods as implemented by different groups with strong expertise in the methodology. Specifically, each research group was provided with two training datasets (one simulated and one observed) along with a set of prediction locations. Each group then wrote their own implementation of their method to produce predictions at the given location and each was subsequently run on a common computing environment. The methods were then compared in terms of various predictive diagnostics.
Publisher
Springer Science + Business Media,Springer US,Springer,Springer Nature B.V
Subject
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