2019
DOI: 10.3390/rs11222605
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Performance Comparison of Machine Learning Algorithms for Estimating the Soil Salinity of Salt-Affected Soil Using Field Spectral Data

Abstract: Salt-affected soil is a prominent ecological and environmental problem in dry farming areas throughout the world. China has nearly 9.9 million km2 of salt-affected land. The identification, monitoring, and utilization of soil salinization have become important research topics for promoting sustainable progress. In this paper, using field-measured spectral data and soil salinity parameter data, through analysis and transformation of spectral data, five machine learning models, namely, random forest regression (… Show more

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Cited by 26 publications
(16 citation statements)
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“…In this study, four RCRW a-b parameters (RCRW 532-550 , RCRW 665-674 , RCRW 691-698 , and RCRW 738-747 ) were determined by the same method. Based on the four selected RCRW a-b , combined with the gradient boosting regression tree (GBRT) algorithm [38,39], we obtained the spatiotemporal distribution of SPAD values in Plot 1 and Plot 2.…”
Section: Estimating Rice Spad Based On Rcrw A-bmentioning
confidence: 99%
See 1 more Smart Citation
“…In this study, four RCRW a-b parameters (RCRW 532-550 , RCRW 665-674 , RCRW 691-698 , and RCRW 738-747 ) were determined by the same method. Based on the four selected RCRW a-b , combined with the gradient boosting regression tree (GBRT) algorithm [38,39], we obtained the spatiotemporal distribution of SPAD values in Plot 1 and Plot 2.…”
Section: Estimating Rice Spad Based On Rcrw A-bmentioning
confidence: 99%
“…The core idea of GBRT is that each calculation is completed by a basic model, and the subsequent calculation is done to reduce the residual of the previous model and create a new basic model with the reduced residual in the gradient direction. By adjusting the weight of the weak prediction model, the final strong prediction model can be obtained [38,39]. The contributions of decision trees (learning_rate), the number of sub-decision trees (n_estimators), and the maximum depth of each decision tree (max_depth) are the important parameters in GBRT [28].…”
Section: Estimating Rice Spad Based On Rcrw A-bmentioning
confidence: 99%
“…The gradient boosting regression tree (GBRT) is an iterative decision tree algorithm composed of multiple decision trees, which makes GBRT difficult for parallel computing. The core idea of the GBRT is that each calculation is done by a basic model, and the subsequent calculation is undertaken to reduce the residual of previous model and to create a new basic model in the direction of gradient with reduced residuals [38,39]. Therefore, a strong prediction model can be obtained by adjusting the weight of the weak prediction model.…”
Section: Gradient Boosting Regression Treementioning
confidence: 99%
“…The random forest regression (RFR) [30,31] is an integrated classifier composed of multiple decision trees based on bagging. There is no correlation between the decision trees.…”
Section: Rfr Modelmentioning
confidence: 99%