Evaluating scale effects of topographic variables in landslide susceptibility models using GIS-based machine learning techniques
Kuan-Tsung Chang(Minghsin University of Science and Technology), Jie Dou(China Pharmaceutical University), Binh Thai Pham(University of Economics Ho Chi Minh City), Abdelaziz Merghadi(Université Larbi Tébessi), Ali P. Yunus(Chengdu University of Technology)
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