HannaMeyer/CAST
Developer Version of the R package CAST: Caret Applications for Spatio-Temporal models
This tool helps scientists and researchers build more accurate machine learning models for predictions that change across space or time, like environmental maps. You provide your spatial or spatio-temporal datasets and desired predictions, and it helps you select the best variables and assess the reliability of your model's predictions. Geographers, environmental scientists, and remote sensing specialists are the primary users.
131 stars.
Use this if you need to create reliable maps or forecasts that account for geographical or time-based variations and want to avoid overfitting your model to your training data.
Not ideal if your data does not have a spatial or temporal component, or if you prefer not to work within the R programming environment.
Stars
131
Forks
36
Language
R
License
—
Category
Last pushed
Mar 13, 2026
Commits (30d)
0
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