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Geological Environment and Engineering
Comparison of the efficiency of some machine learning models for mass movement susceptibility mapping (Case study: Chaharmahal and Bakhtiari province)

Sayed Naeim Emami; Saleh Yousefi

Volume 33, Issue 2 , June 2023, , Pages 183-204

https://doi.org/10.22071/gsj.2022.345954.2003

Abstract
  Mass movements are among the most dangerous natural hazards in mountainous regions. The present study employs machine learning (ML) models for mass movement susceptibility mapping (MMSM) in Iran based on a comprehensive dataset of 864 mass movements which include debris flow, landslide, and rockfall ...  Read More