2022
DOI: 10.1080/10106049.2022.2066202
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Improvement of the predictive performance of landslide mapping models in mountainous terrains using cluster sampling

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Cited by 8 publications
(11 citation statements)
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“…Slope, TRI, NDVI, distance to streams, faults and TWI are influential LCFs using random partitioning techniques. The slope angle was shown to be the most important factor in both cluster and random partitioning approaches, which is consistent with the observations of Pham et al (2021), Ali et al (2021) and Riaz et al (2022). When compared to gentle slopes, steeper slopes have a greater impact on mass wasting (Basharat et al, 2021).…”
Section: Landslide Susceptibility Mapping Via Random Forestsupporting
confidence: 84%
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“…Slope, TRI, NDVI, distance to streams, faults and TWI are influential LCFs using random partitioning techniques. The slope angle was shown to be the most important factor in both cluster and random partitioning approaches, which is consistent with the observations of Pham et al (2021), Ali et al (2021) and Riaz et al (2022). When compared to gentle slopes, steeper slopes have a greater impact on mass wasting (Basharat et al, 2021).…”
Section: Landslide Susceptibility Mapping Via Random Forestsupporting
confidence: 84%
“…Landcover receives the most weight, followed by lithology and slope gradient, according to Riaz et al (2018). Recently Riaz et al (2022) used MLAs for LSM in the largest district of AJK (Kashmir Himalayas) and found that slope gradient is the most influential LCF in the region. Our results confirm that landslide patterns are clustered and cluster training sampling enhances the prediction efficacy in the selected landslide-prone and mountainous district.…”
Section: Comparison Of Model Performance and Validationmentioning
confidence: 99%
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