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Land evaluation based on Boosting decision tree ensembles



Land evaluation based on Boosting decision tree ensembles



Transactions Of The Chinese Society Of Agricultural Engineering: 7, 78-81



The decision tree has the characteristics of high accuracy and intelligibility in land evaluation and land use planning, and especially C5.0 uses Boosting technique to improve classification accuracy, land evaluation using C5.0 with the function to build Boosting decision tree ensembles was conducted. Moreover, C5.0 was used to evaluate the land resources of Guangdong Province (China), and the results using decision tree with and without Boosting were analysed and compared.

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Accession: 032112039

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