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      Selection of Environmental Covariates for Classifier Training Applied in Digital Soil Mapping

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          Abstract

          ABSTRACT A large number of predictor variables can be used in digital soil mapping; however, the presence of irrelevant covariables may compromise the prediction of soil types. Thus, algorithms can be applied to select the most relevant predictors. This study aimed to compare three covariable selection systems (two filter algorithms and one wrapper algorithm) and assess their impacts on the predictive model. The study area was the Lajeado River Watershed in the state of Rio Grande do Sul, Brazil. We used forty predictor covariables, derived from a digital elevation model with 30 m resolution, in which the three selection models were applied and separated into subsets. These subsets were used to assess performance by applying four prediction algorithms. The wrapper method obtained the best performance values for the predictive model in all the algorithms evaluated. The three selection methods applied reduced the number of covariables in the predictive models by 70 % and enabled prediction of the 14 soil mapping units.

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          Most cited references29

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          On digital soil mapping

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            Benchmarking attribute selection techniques for discrete class data mining

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              Machine learning for predicting soil classes in three semi-arid landscapes

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                Author and article information

                Contributors
                Role: ND
                Role: ND
                Role: ND
                Role: ND
                Role: ND
                Role: ND
                Journal
                rbcs
                Revista Brasileira de Ciência do Solo
                Rev. Bras. Ciênc. Solo
                Sociedade Brasileira de Ciência do Solo (Viçosa, MG, Brazil )
                1806-9657
                January 2019
                : 42
                : 0
                : e0170414
                Affiliations
                [1] Porto Alegre Rio Grande do Sul orgnameUniversidade Federal do Rio Grande do Sul Brazil
                [3] Florianópolis Santa Catarina orgnameEmpresa de Pesquisa Agropecuária e Extensão Rural de Santa Catarina orgdiv2Centro de Informações de Recursos Ambientais e de Hidrometeorologia de Santa Catarina Brazil
                [4] Lages Santa Catarina orgnameUniversidade do Estado de Santa Catarina orgdiv1Centro de Ciências Agroveterinárias orgdiv2Departamento de Engenharia Ambiental e Sanitária Brazil
                [2] Porto Alegre Rio Grande do Sul orgnameUniversidade Federal do Rio Grande do Sul orgdiv1Departamento de Solos Brazil
                Article
                S0100-06832018000100315
                10.1590/18069657rbcs20170414
                8a69a8b9-ec4b-4ca9-88cf-12438850a48c

                This work is licensed under a Creative Commons Attribution 4.0 International License.

                History
                : 27 December 2017
                : 21 May 2018
                Page count
                Figures: 0, Tables: 0, Equations: 0, References: 46, Pages: 0
                Product

                SciELO Brazil

                Categories
                Division 1 - Soil in Space and Time

                data mining,geomorphometric variables,soil prediction

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