Selection of contributing factors for predicting landslide susceptibility using machine learning and deep learning models
Cheng Chen, Lei Fan

TL;DR
This study evaluates how selecting different contributing factors affects the accuracy of landslide susceptibility predictions using various machine learning and deep learning models, employing multiple feature selection methods.
Contribution
It compares the effectiveness of several feature selection techniques on ML and DL models for landslide prediction, highlighting their impact on model accuracy.
Findings
Feature selection improves prediction accuracy.
Different methods vary in effectiveness.
Autoencoder-based selection benefits deep learning models.
Abstract
Landslides are a common natural disaster that can cause casualties, property safety threats and economic losses. Therefore, it is important to understand or predict the probability of landslide occurrence at potentially risky sites. A commonly used means is to carry out a landslide susceptibility assessment based on a landslide inventory and a set of landslide contributing factors. This can be readily achieved using machine learning (ML) models such as logistic regression (LR), support vector machine (SVM), random forest (RF), extreme gradient boosting (Xgboost), or deep learning (DL) models such as convolutional neural network (CNN) and long short time memory (LSTM). As the input data for these models, landslide contributing factors have varying influences on landslide occurrence. Therefore, it is logically feasible to select more important contributing factors and eliminate less…
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Taxonomy
MethodsLogistic Regression
