Guio Blanco, Carlos ManuelBrito Gómez, Víctor ManuelCrespo Sánchez, Patricio JavierLieb, Mareike2018-10-172018-10-1720180016-7061https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85038206836&origin=inwardSoils of Páramo ecosystems regulate the water supply to many Andean populations. In spite of being a necessary input to distributed hydrological models, regionalized soil water retention data from these areas are currently not available. The investigated catchment of the Quinuas River has a size of about 90 km 2 and comprises parts of the Cajas National Park in southern Ecuador. It is dominated by soils with high organic carbon contents, which display characteristics of volcanic influence. Besides providing spatial predictions of soil water retention at the catchment scale, the study presents a detailed methodological insight to model setup and validation of the underlying machine learning approach with random forest. The developed models performed well predicting volumetric water contents between 0.55 and 0.9 cm 3 cm− 3. Among the predictors derived from a digital elevation model …Soils of Páramo ecosystems regulate the water supply to many Andean populations. In spite of being a necessary input to distributed hydrological models, regionalized soil water retention data from these areas are currently not available. The investigated catchment of the Quinuas River has a size of about 90 km 2 and comprises parts of the Cajas National Park in southern Ecuador. It is dominated by soils with high organic carbon contents, which display characteristics of volcanic influence. Besides providing spatial predictions of soil water retention at the catchment scale, the study presents a detailed methodological insight to model setup and validation of the underlying machine learning approach with random forest. The developed models performed well predicting volumetric water contents between 0.55 and 0.9 cm 3 cm− 3. Among the predictors derived from a digital elevation model …es-ESPáramoParameter tuningRandom ForestValidationWater retentionSpatial prediction of soil water retention in a Páramo landscape: methodological insight into machine learning using random forestARTÍCULO10.1016/j.geoderma.2017.12.002