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A Comparative Study of Landslide Susceptibility Mapping Using Bagging PU Learning in Class-Prior Probability Shift Datasets
by
Zhao, Lingran
, Niu, Ruiqing
, Ma, Hangling
, Xu, Hang
, Wu, Xueling
, Dong, Jiahui
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Bagging
/ Bagging PU learning
/ China
/ class-prior probability shift
/ Classification
/ Comparative analysis
/ Comparative studies
/ comparative study
/ Conditional probability
/ data collection
/ Datasets
/ Distribution
/ Emergency management
/ Environmental aspects
/ generalization performance evaluation
/ Geology
/ landslide susceptibility mapping
/ Landslides
/ Landslides & mudslides
/ Machine learning
/ Mapping
/ prediction
/ probability
/ Probability learning
/ Regions
/ Remote sensing
/ Risk assessment
/ Semi-supervised learning
/ Susceptibility
2023
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A Comparative Study of Landslide Susceptibility Mapping Using Bagging PU Learning in Class-Prior Probability Shift Datasets
by
Zhao, Lingran
, Niu, Ruiqing
, Ma, Hangling
, Xu, Hang
, Wu, Xueling
, Dong, Jiahui
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Bagging
/ Bagging PU learning
/ China
/ class-prior probability shift
/ Classification
/ Comparative analysis
/ Comparative studies
/ comparative study
/ Conditional probability
/ data collection
/ Datasets
/ Distribution
/ Emergency management
/ Environmental aspects
/ generalization performance evaluation
/ Geology
/ landslide susceptibility mapping
/ Landslides
/ Landslides & mudslides
/ Machine learning
/ Mapping
/ prediction
/ probability
/ Probability learning
/ Regions
/ Remote sensing
/ Risk assessment
/ Semi-supervised learning
/ Susceptibility
2023
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Do you wish to request the book?
A Comparative Study of Landslide Susceptibility Mapping Using Bagging PU Learning in Class-Prior Probability Shift Datasets
by
Zhao, Lingran
, Niu, Ruiqing
, Ma, Hangling
, Xu, Hang
, Wu, Xueling
, Dong, Jiahui
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Bagging
/ Bagging PU learning
/ China
/ class-prior probability shift
/ Classification
/ Comparative analysis
/ Comparative studies
/ comparative study
/ Conditional probability
/ data collection
/ Datasets
/ Distribution
/ Emergency management
/ Environmental aspects
/ generalization performance evaluation
/ Geology
/ landslide susceptibility mapping
/ Landslides
/ Landslides & mudslides
/ Machine learning
/ Mapping
/ prediction
/ probability
/ Probability learning
/ Regions
/ Remote sensing
/ Risk assessment
/ Semi-supervised learning
/ Susceptibility
2023
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A Comparative Study of Landslide Susceptibility Mapping Using Bagging PU Learning in Class-Prior Probability Shift Datasets
Journal Article
A Comparative Study of Landslide Susceptibility Mapping Using Bagging PU Learning in Class-Prior Probability Shift Datasets
2023
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Overview
Landslide susceptibility mapping is typically based on binary prediction probabilities. However, non-landslide samples in modeling datasets are often unlabeled data, and the phenomenon of class-priori shift, that is, the proportion of landslide samples frequently deviates from real-world scenarios and is spatially heterogeneous. By comparing the classification performance and predicted probability distributions across multiple unbalanced datasets with known and unknown sample proportions, this study assesses the landslide susceptibility model’s generalization ability in the context of class-prior shifts. The study investigates the potential of Bagging PU Learning, a semi-supervised learning approach, in improving the generalization performance of landslide susceptibility models and proposes the Bagging PU-GDBT algorithm. Our findings highlight the effectiveness of Bagging PU Learning in enhancing the recall of landslides and the generalization capabilities of models on unbalanced datasets. This method reduces prediction uncertainties, especially in high and very high susceptibility zones. Furthermore, results emphasize the superiority of models trained on balanced datasets with 1:1 sample ratio for landslide susceptibility mapping over those trained on unbalanced datasets.
Publisher
MDPI AG
Subject
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