From Geoscience Australia

A Critical Review of Spatial Predictive Modeling Process in Environmental Sciences with Reproducible Examples in R

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Created 10/02/2025

Updated 10/02/2025

Spatial predictive methods are increasingly being used to generate predictions across various disciplines in environmental sciences. Accuracy of the predictions is critical as they form the basis for environmental management and conservation. Therefore, improving the accuracy by selecting an appropriate method and then developing the most accurate predictive model(s) is essential. However, it is challenging to select an appropriate method and find the most accurate predictive model for a given dataset due to many aspects and multiple factors involved in the modeling process. Many previous studies considered only a portion of these aspects and factors, often leading to sub-optimal or even misleading predictive models. This study evaluates a spatial predictive modeling process, and identifies nine major components for spatial predictive modeling. Each of these nine components is then reviewed, and guidelines for selecting and applying relevant components and developing accurate predictive models are provided. Finally, reproducible examples using spm, an R package, are provided to demonstrate how to select and develop predictive models using machine learning, geostatistics, and their hybrid methods according to predictive accuracy for spatial predictive modeling; reproducible examples are also provided to generate and visualize spatial predictions in environmental sciences. Citation: Li, J. A Critical Review of Spatial Predictive Modeling Process in Environmental Sciences with Reproducible Examples in R. Appl. Sci. 2019, 9, 2048. https://doi.org/10.3390/app9102048

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Field Value
Title A Critical Review of Spatial Predictive Modeling Process in Environmental Sciences with Reproducible Examples in R
Language eng
Licence notspecified
Landing Page https://devweb.dga.links.com.au/data/dataset/9e996bf3-8b77-4476-80c1-83aad6fafda6
Contact Point
Geoscience Australia
clientservices@ga.gov.au
Reference Period 26/02/2018
Geospatial Coverage {"type": "Polygon", "coordinates": [[[154.0, -44.0], [112.0, -44.0], [112.0, -9.0], [154.0, -9.0], [154.0, -44.0]]]}
Data Portal data.gov.au

Data Source

This dataset was originally found on data.gov.au "A Critical Review of Spatial Predictive Modeling Process in Environmental Sciences with Reproducible Examples in R". Please visit the source to access the original metadata of the dataset:
https://devweb.dga.links.com.au/data/dataset/a-critical-review-of-spatial-predictive-modeling-process-in-environmental-sciences-with-reprodu

No duplicate datasets found.