2021
DOI: 10.21203/rs.3.rs-346721/v1
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Comparison of rotation forest based intelligence models for landslide susceptibility modeling

Abstract: The precision of landslide susceptibility assessment has always been the focus of landslide spatial prediction research. It can be considered as the possibility of landslide disaster under the action of human activities or natural factors, or both of them. For the further exploration of the mechanism of this process, Muchuan County was proposed as the study area, and four well-known machine learning models, namely rotation forest (RF), J48 decision tree (J48), alternating decision tree (ADTree) and random fore… Show more

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