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Conversion between Soil Texture Classification Systems using the Random Forest Algorithm
Author(s) -
Milan Čistý,
Lubomir Celar,
Peter Minarič
Publication year - 2015
Publication title -
air soil and water research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.409
H-Index - 12
ISSN - 1178-6221
DOI - 10.4137/aswr.s31924
Subject(s) - random forest , parametric statistics , soil texture , ensemble learning , texture (cosmology) , computer science , ensemble forecasting , parametric model , statistical classification , data mining , soil water , algorithm , artificial intelligence , pattern recognition (psychology) , soil science , environmental science , statistics , mathematics , image (mathematics)
This study focuses on the reclassification of a soil texture system following a hybrid approach in which the conventional particle-size distribution (PSD) models are coupled with a random forest (RF) algorithm for achieving more generally applicable and precise outputs. The existing parametric PSD models that could be used for this purpose have various limitations; different models frequently show unequal degrees of precision in different soils or under different environments. The authors present in this article a novel ensemble modeling approach in which the existing PSD models are used as ensemble members. An improvement in precision was proved by better statistical indicators for the results obtained, and the article documents that the ensemble model worked better than any of its constituents (different existing parametric PSD models). This study is verified by using a soil dataset from Slovakia, which was originally labeled by a national texture classification system, which was then transformed to the USDA soil classification system. However, the methodology proposed could be used more generally, and the information provided is also applicable when dealing with the soil texture classification systems used in other countries.

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