Applying different resampling strategies in machine learning models to predict head-cut gully erosion susceptibility
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Amir Mosavi | Saeid Janizadeh | Subodh Chandra Pal | B. Pahlevanzadeh | Md. Jalil Piran | Pravat Kumar Shit | Fengjie Wang | Shahab S. Band | Mehebub Sahana | A. Mosavi | S. Pal | M. Sahana | Saeid Janizadeh | P. Shit | S. Band | M. J. Piran | Fengjie Wang | B. Pahlevanzadeh
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