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Title A novel hybrid artificial intelligence approach based on the rotation forest ensemble and na€ ıve Bayes tree classifiers for a landslide susceptibility assessment in Langao County, China
Type JournalPaper
Keywords Landslide susceptibility mapping, hybrid integration approach, comparison, GIS, China
Abstract The main objective of this study was to produce landslide susceptibility maps for Langao ‎County, China, using a novel hybrid artificial intelligence method based on rotation forest ‎ensembles (RFEs) and naïve Bayes tree (NBT) classifiers labeled the RF-NBT model. The ‎spatial database consisted of eighteen conditioning factors that were selected using the ‎information gain ratio (IGR) method. The model was evaluated using quantitative statistical ‎criteria, including the sensitivity, specificity, accuracy, root mean squared error (RMSE), and ‎area under the receiver operating characteristic curve (AUC). Furthermore, the new model ‎was compared with the NBT, functional tree (FT), logistic model tree (LMT) and reduced-‎error pruning tree (REPTree) soft computing benchmark models. The findings indicated that ‎the RF-NBT model showed an increased prediction accuracy relative to the NBT model using ‎both the training and validation datasets, and the RF-NBT model exhibited a greater ‎capability for landslide susceptibility mapping. The new RF-NBT model also showed the ‎most preferable results compared with the FT, LMT and REPTree models. Finally, an analysis ‎of the landslide density (LD) using the RF-NBT model demonstrated that the very high ‎susceptibility (VHS) class had the highest LD (3.552) among the landslide susceptibility ‎maps. These results can be used for the planning and management of areas vulnerable to ‎landslides in order to prevent damages caused by such natural disasters.‎
Researchers Ning Zhang (Not In First Six Researchers), Haoyuan Hong (Not In First Six Researchers), Shuai Zhang (Fifth Researcher), Baharin Ben Ahmad (Fourth Researcher), Himan Shahabi (Third Researcher), Ataollah Shirzadi (Second Researcher), Wei Chen (First Researcher)