Pulse Brain · Growing Health Evidence Index
Peer-reviewed

A Brief Review of Random Forests for Water Scientists and Practitioners and Their Recent History in Water Resources

Hristos Tyralis, Georgia Papacharalampous, Andreas Langousis

Water · 2019

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Summary

Random forests (RF) is a supervised machine learning algorithm, which has recently started to gain prominence in water resources applications. However, existing applications are generally restricted to the implementation of Breiman’s original algorithm for regression and classification problems, while numerous developments could be also useful in solving diverse practical problems in the water sector. Here we popularize RF and their variants for the practicing water scientist, and discuss related concepts and techniques, which have received less attention from the water science and hydrologic communities. In doing so, we review RF applications in water resources, highlight the potential of the original algorithm and its variants, and assess the degree of RF exploitation in a diverse range

Source type
Peer-reviewed study
DOI
10.3390/w11050910
Catalogue ID
SNmokeh8mi-uc81qy
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