2022
DOI: 10.21203/rs.3.rs-1260650/v1
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On The Prediction of Landslide Occurrences and Sizesvia Hierarchical Neural Networks

Abstract: For more than three decades, the scientific community that studies landslides through data-driven models has focused on estimating where landslides occur across a given landscape. This concept is widely known as landslide susceptibility. And, it has seen a vast improvement from old bivariate statistical techniques to modern deep learning routines. Despite all these advancements, no spatially-explicit data-driven model is currently capable of also predicting how large landslides may be once they trigger in a … Show more

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