2024
DOI: 10.21203/rs.3.rs-3254996/v2
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A modular framework for FAIR shallow landslide susceptibility mapping based on machine learning

Ann-Kathrin Edrich,
Anil Yildiz,
Ribana Roscher
et al.

Abstract: Machine learning has grown in popularity in the past few years for susceptibility and hazard mapping tasks. Necessary steps for the generation of a susceptibility or hazard map are repeatedly implemented in new studies. We present a Random Forest classifier-based landslide susceptibility and hazard mapping framework to facilitate future mapping studies using machine learning. The framework, as a piece of software, follows the FAIR paradigm, and hence is set up as a transparent, reproducible and modularly exten… Show more

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