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COMPARISON OF SAMPLING PROCEDURES FOR TRAINING PREDICTIVE MODELS IN DIGITAL SOIL CLASS MAPPING

Rodrigo Teske, Elvio Giasson, Tatiane Bagatini

01/Jan/2015

The predictive models used in digital soil mapping (DSM) need to be trained with data that most fully capture the variation of terrain and soil properties in order to generate adequate correlations between environmental variables and the occurrence of soil unities. Several methods have been used in DSM to evaluate the accuracy of these models. The aims of this study were to compare the use of three sampling procedures for training a classification and regression tree (CART) algorithm, and evaluate […]