Different sampling strategies for predicting landslide susceptibilities are deemed less consequential with deep learning
Jie Dou(China Three Gorges University), Hiromitsu Yamagishi(Hokkaido University), Ram Avtar(Chennai Mathematical Institute), Yawar Hussain(Universidade de Brasília), Abdelaziz Merghadi(Université Larbi Tébessi), Hoang Nguyen(Duy Tan University), Ali P. Yunus(Indian Institute of Science Education and Research Mohali), Binh Thai Pham(University Of Transport Technology), Yu-Long Chen(China University of Mining and Technology), Ataollah Shirzadi(University of Kurdistan)
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