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blacklegRandomForest

This repository contains a MATLAB (version R2022b) script for developing and interpreting a Random Forest model for predicting incidence of potato blackleg at the landscape-scale.

From the manuscript:

Skelsey, P. Civita, F., and Humphris, S. 2023. Landscape epidemiology of potato blackleg. Phytopathology, doi: https://doi.org/10.1094/PHYTO-12-22-0483-R

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