Landslides are a serious geohazard in many mountainous areas of Vietnam during the rainy season.They directly threaten human lives and properties every year. Landslide susceptibility maps are useful tools for risk mitigation, land-use planning, and early warning systems for local areas. It is necessary to update these maps continuously because of the complexity of landslide events. This fact requires further extending the approach techniques with practical implications. Therefore, this study aimed to develop landslide susceptibility prediction maps based on advanced Machine Learning (ML) techniques. Five state-of-art hybrid ML models were developed: Bagging -MLP, Dagging -MLP, Decorate -MLP, Rotation Forest -MLP, Random SubSpace -MLP with Multi-Layer Perceptron (MLP) as a base classi er. Sixteen causative factors were collected to build landslide susceptibility maps based on the relationship between historical landslide locations and speci c local geo-environmental conditions. The model performance was veri ed using various statistical indexes. Based on the Area Under ROC curve (AUC) analysis results of the testing dataset, the Rotation Forest -MLP model has the greatest predictive accuracy of AUC = 0.818. It is followed by the Decorate -MLP and Bagging -MLP (AUC=0.804), the Random SubSpace -MLP model (AUC=0.796), the Dagging -MLP (AUC=0.789), and the single MLP (AUC=0.698). The results of this study can be applied effectively to other mountainous regions to mitigate the risk of landslides.
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