Tên bài báo:

Machine Learning Methods of Kernel Logistic Regression and Classifcation and Regression Trees for Landslide Susceptibility Assessment at Part of Himalayan Area, India
Tác giả:
Phạm Thái Bình
Tham gia cùng:
Tạp chí:
Indian Journal of Science and Technology
Năm xuất bản:
2018
Trang:
Từ trang 1 đến trang 10
Lĩnh vực:
Kỹ thuật xây dựng công trình giao thông
Phạm vi:
Quốc tế

Tóm tắt:

Objectives: To evaluate performance of machine learning methods for assessment of landslide susceptibility at Himalayan area, India. Methods/Statistical analysis: Machine learning methods namely Kernel Logistic Regression (KLR) and Classification and Regression Trees (CART) were applied and compared in this study. Landslide affecting parameters and 930 historical landslides were used for generating datasets. Receiver Operating Characteristic (ROC) curve and Statistical analysis methods were used for validation and comparison. Findings: Result analysis shows that both the KLR and CART models perform well for landslide susceptibility assessment but the KLR model (AUC = 0.894) outperforms the CART model (AUC = 0.842). Thus, both these methods can be considered as promising machine learning techniques for landslide susceptibility assessment; however, the KLR is better than the CART. Application/Improvements: Results of this study would be useful for susceptibility assessment and landslide hazard management in landslide prone areas.

Từ khóa:

Classifcation and Regression Trees (CART) Kernel Logistic Regression (KLR) Landslides Machine Learning
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