2019
DOI: 10.1016/j.rse.2019.02.022
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Downscaling SMAP soil moisture estimation with gradient boosting decision tree regression over the Tibetan Plateau

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Cited by 159 publications
(95 citation statements)
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References 74 publications
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“…The comparison between RF4 and RF5 indicates that the RF model with more VIs and topographic information can increase the accuracy further to obtain a more robust RF model. In addition, the slopes were all less than 1, which is similar to [84]. Second, the performances of RF1-RF5 generally agreed with the variable importance ( Figure 4).…”
Section: Evaluation Of the Random Forest (Rf) Models At 9 Km Resolutionsupporting
confidence: 67%
“…The comparison between RF4 and RF5 indicates that the RF model with more VIs and topographic information can increase the accuracy further to obtain a more robust RF model. In addition, the slopes were all less than 1, which is similar to [84]. Second, the performances of RF1-RF5 generally agreed with the variable importance ( Figure 4).…”
Section: Evaluation Of the Random Forest (Rf) Models At 9 Km Resolutionsupporting
confidence: 67%
“…The results of all regression trees are integrated to give the final result [52,53]. The GBR model can handle mixed data types and is robust to outliers [54]. As GBR has not been widely applied to mangrove biomass estimation, it was considered for testing in the present study.…”
Section: Selection Of Machine Learning Modelmentioning
confidence: 99%
“…2020, 12,1334 3 of 24 and support vector machine (SVM) techniques [27], have increasingly been used for mangrove AGB retrievals with different EO datasets due to their ability to produce better prediction accuracies than parametric models. Recently, gradient boosting decision tree (GBDT) techniques have been shown to be powerful not only for classification but also for regression tasks, such as soil moisture estimation [28] and forest AGB estimation [29,30]. In particular, a novel GBDT technique, extreme gradient boosting regression (XGBR), which was proposed by Chen and Guestrin [31], outperforms other available boosting implementations when handling various environmental issues such as the mobility of disease [32], energy supply security [33], and lithology classification [34].…”
Section: Introductionmentioning
confidence: 99%