2020
DOI: 10.1016/j.scitotenv.2020.138595
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A novel ensemble computational intelligence approach for the spatial prediction of land subsidence susceptibility

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Cited by 81 publications
(50 citation statements)
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References 101 publications
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“…Another study of LS in the Kashmar region, Iran based on MaxEnt models gives the result of ROC-AUC is 88.9% (Rahmati et al, 2019a,b) which is significantly higher than the present study. Similarly, LS susceptibility studies in the Semnan province of Iran using ANN models gives the result of ROC-AUC is 0.919 (Arabameri et al, 2020d) which is less than the our study result (AUC = 0.924). Therefore, studies indicate that the same ML models give different result in accuracy assessment from region to region, depending upon the local geo-environmental factors.…”
Section: Discussioncontrasting
confidence: 98%
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“…Another study of LS in the Kashmar region, Iran based on MaxEnt models gives the result of ROC-AUC is 88.9% (Rahmati et al, 2019a,b) which is significantly higher than the present study. Similarly, LS susceptibility studies in the Semnan province of Iran using ANN models gives the result of ROC-AUC is 0.919 (Arabameri et al, 2020d) which is less than the our study result (AUC = 0.924). Therefore, studies indicate that the same ML models give different result in accuracy assessment from region to region, depending upon the local geo-environmental factors.…”
Section: Discussioncontrasting
confidence: 98%
“…A present time, ML algorithms and their ensemble methods have been applied in various fields for the susceptibility mapping and it has been shown to be effective in terms of predictive performance (Nguyen et al, 2019;Arabameri et al, 2020c;Feng et al, 2020;Liu et al, 2020;Zhang et al, 2020a;Saha et al, 2021b). Particularly, ensemble models always enhanced the output result by integrated the several ML algorithms (Mojaddadi et al, 2017;Arabameri et al, 2020d;Saha et al, 2021a).…”
Section: Discussionmentioning
confidence: 99%
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