Original paper
Comparative assessment using boosted regression trees, binary logistic regression, frequency ratio and numerical risk factor for gully erosion susceptibility modelling
Paper Details
Title
Comparative assessment using boosted regression trees, binary logistic regression, frequency ratio and numerical risk factor for gully erosion susceptibility modelling
Published Date
Aug 31, 2019
Journal
Volume
183
Pages
104223 - 104223
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Notes
History