2022
DOI: 10.1177/03091333221113660
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Assessing the effectiveness of alternative landslide partitioning in machine learning methods for landslide prediction in the complex Himalayan terrain

Abstract: Several devastating landslides have occurred in the NW Himalayas, which has prompted several researchers to strive for improvement in landslide susceptibility modelling (LSM) methodologies. This research analyzes the effectiveness of alternative landslide partitioning techniques on LSM in the landslide-prone district, Muzaffarabad, Pakistan. We developed a landslide inventory of 961 landslides and then traditionally divided it into training (672; 70%) and testing (289; 30%) samples. These training samples (672… Show more

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Cited by 11 publications
(2 citation statements)
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“…Although different models exhibit comparable performance levels, their prediction capabilities differ. The outcomes of these single and hybrid machine learning (ML) approaches vary from those of previous studies undertaken globally, although all of them provide a substantial degree of landslide prediction (AUC > 0.850) (Sahana et al, 2020;Psathas et al, 2022;Riaz et al, 2022;Wei et al, 2022;Yang et al, 2023). The use of distinct dataset sources by each expert in their inquiry exemplifies the disparity.…”
Section: Discussionmentioning
confidence: 99%
“…Although different models exhibit comparable performance levels, their prediction capabilities differ. The outcomes of these single and hybrid machine learning (ML) approaches vary from those of previous studies undertaken globally, although all of them provide a substantial degree of landslide prediction (AUC > 0.850) (Sahana et al, 2020;Psathas et al, 2022;Riaz et al, 2022;Wei et al, 2022;Yang et al, 2023). The use of distinct dataset sources by each expert in their inquiry exemplifies the disparity.…”
Section: Discussionmentioning
confidence: 99%
“…The success of the model was evident when it managed to predict several high-risk zones that were previously not identified using traditional methods. Moreover, the model's real-time data processing capability allowed authorities to take timely evacuation measures, saving numerous lives [36].…”
Section: Landslide Prediction In the Himalayan Regionmentioning
confidence: 99%