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A novel ensemble approach of bivariate statistical-based logistic model tree classifier for landslide susceptibility assessment
116
Citations
72
References
2018
Year
EngineeringGeomorphologyForestryDiagnosisLandslide Susceptibility MappingChange AnalysisMining MethodsNatural Hazard AssessmentEarth ScienceSocial SciencesDisaster DetectionRoc CurveNovel Ensemble ApproachDecision Tree LearningBiostatisticsLandslide RiskMultiple Classifier SystemPredictive AnalyticsGeographyForecastingLandslide Susceptibility AssessmentRemote SensingLogistic RegressionClassifier SystemFlood Risk ManagementEnsemble ModelsEnsemble Algorithm
This study addresses landslide susceptibility mapping (LSM) using a novel ensemble approach of using a bivariate statistical method (weights of evidence [WoE] and evidential belief function [EBF])-based logistic model tree (LMT) classifier. The performance and prediction capability of the ensemble models were assessed using the area under the ROC curve (AUROC), standard error, 95% confidence intervals and significance level P. Model performance analyses indicated that the AUROC values of the WoE–LMT ensemble model using the training and validation data-sets were 86.02 and 85.9%, respectively, whereas those of the EBF–LMT ensemble model were 88.2 and 87.8%, respectively. On the other hand, the AUC curves for the four landslide susceptibility maps indicated that the AUC values of the ensemble models of WoE–LMT (85.11 and 83.98%) and EBF–LMT (86.21 and 85.23%) could improve the performance and prediction accuracy of single WoE (84.23 and 82.46%) and EBF (85.39 and 81.33%) models for the training and validation data-sets.
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