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Comparative Performance of Machine Learning Models for Landslide Susceptibility Assessment: Impact of Sampling Strategies in Highway Buffer Zone
by
Bai, Mingzhou
, Tang, Zhenyu
, Qiu, Shumao
, Xia, Haoying
, Lin, Daming
in
deep learning
/ Disasters
/ Fault lines
/ Geographic information systems
/ Geology
/ Geomorphology
/ Land use
/ landslide susceptibility assessment
/ Landslides & mudslides
/ Lithology
/ Machine learning
/ Mapping
/ Neural networks
/ Precipitation
/ Rain
/ Remote sensing
/ Roads & highways
/ SHAP method
/ Snow
/ Topography
2025
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Comparative Performance of Machine Learning Models for Landslide Susceptibility Assessment: Impact of Sampling Strategies in Highway Buffer Zone
by
Bai, Mingzhou
, Tang, Zhenyu
, Qiu, Shumao
, Xia, Haoying
, Lin, Daming
in
deep learning
/ Disasters
/ Fault lines
/ Geographic information systems
/ Geology
/ Geomorphology
/ Land use
/ landslide susceptibility assessment
/ Landslides & mudslides
/ Lithology
/ Machine learning
/ Mapping
/ Neural networks
/ Precipitation
/ Rain
/ Remote sensing
/ Roads & highways
/ SHAP method
/ Snow
/ Topography
2025
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Comparative Performance of Machine Learning Models for Landslide Susceptibility Assessment: Impact of Sampling Strategies in Highway Buffer Zone
by
Bai, Mingzhou
, Tang, Zhenyu
, Qiu, Shumao
, Xia, Haoying
, Lin, Daming
in
deep learning
/ Disasters
/ Fault lines
/ Geographic information systems
/ Geology
/ Geomorphology
/ Land use
/ landslide susceptibility assessment
/ Landslides & mudslides
/ Lithology
/ Machine learning
/ Mapping
/ Neural networks
/ Precipitation
/ Rain
/ Remote sensing
/ Roads & highways
/ SHAP method
/ Snow
/ Topography
2025
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Comparative Performance of Machine Learning Models for Landslide Susceptibility Assessment: Impact of Sampling Strategies in Highway Buffer Zone
Journal Article
Comparative Performance of Machine Learning Models for Landslide Susceptibility Assessment: Impact of Sampling Strategies in Highway Buffer Zone
2025
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Overview
Landslide susceptibility assessment is critical for hazard mitigation and land-use planning. This study evaluates the impact of two different non-landslide sampling methods—random sampling and sampling constrained by the Global Landslide Hazard Map (GLHM)—on the performance of various machine learning and deep learning models, including Naïve Bayes (NB), Support Vector Machine (SVM), SVM-Random Forest hybrid (SVM-RF), and XGBoost. The study area is a 2 km buffer zone along the Duku Highway in Xinjiang, China, with 102 landslide and 102 non-landslide points extracted by aforementioned sampling methods. Models were tested using ROC curves and non-parametric significance tests based on 20 repetitions of 5-fold spatial cross-validation data. GLHM sampling consistently improved AUROC and accuracy across all models (e.g., AUROC gains: NB +8.44, SVM +7.11, SVM–RF +3.45, XGBoost +3.04; accuracy gains: NB +11.30%, SVM +8.33%, SVM–RF +7.40%, XGBoost +8.31%). XGBoost delivered the best performance under both sampling strategies, reaching 94.61% AUROC and 84.30% accuracy with GLHM sampling. SHAP analysis showed that GLHM sampling stabilized feature importance rankings, highlighting STI, TWI, and NDVI as the main controlling factors for landslides in the study area. These results highlight the importance of hazard-informed sampling to enhance landslide susceptibility modeling accuracy and interpretability.
Publisher
MDPI AG
Subject
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