Prediction of tree diameter growth using quantile regression and mixed-effects models
Document Type
Article
Publication Date
5-1-2014
Abstract
A tree diameter growth function is an important component of an individual-tree model. This function can be considered as a mixed-effects model, in which a diameter measurement can be used to calibrate (or localize) the equation to produce improved diameter predictions for the same tree in the future. Another approach considered in this study involved a system of quantile regressions, in which future diameters can be determined through interpolation, based on a current diameter measurement. The aim of this study was to evaluate the use of quantile regression and mixed-effects models in predicting tree diameter growth. Tree diameter at the end of each growth period was predicted from diameter at the beginning of the period by use of one of the four methods: the mixed-effects model and three quantile regression methods that were based on nine quantiles, five quantiles, and three quantiles. The mixed-effects model performed as well as the three quantile regression methods, based on the mean absolute difference and fit index, but was far superior in terms of the mean difference. The mixed-effects model produced an unbiased prediction of future diameter, up to ten years into the future, when calibrated with a current diameter measurement. © 2014 Elsevier B.V.
Publication Source (Journal or Book title)
Forest Ecology and Management
First Page
62
Last Page
66
Recommended Citation
Bohora, S., & Cao, Q. (2014). Prediction of tree diameter growth using quantile regression and mixed-effects models. Forest Ecology and Management, 319, 62-66. https://doi.org/10.1016/j.foreco.2014.02.006