An extreme rainfall-induced landslide susceptibility assessment using autoencoder combined with random forest in Shimane Prefecture, Japan

被引:0
作者
Kounghoon Nam
Fawu Wang
机构
[1] Shimane University,Department of Earth Science
来源
Geoenvironmental Disasters | / 7卷
关键词
Stacked autoencoder; Sparse autoencoder; Support vector machine; Random forest; Landslide susceptibility;
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