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Circular Regression Trees and Forests with an Application to Probabilistic Wind Direction Forecasting

Authors :
Lisa Schlosser
Georg J. Mayr
Torsten Hothorn
Achim Zeileis
Reto Stauffer
Moritz N. Lang
University of Zurich
Lang, Moritz N
Source :
Journal of the Royal Statistical Society Series C: Applied Statistics. 69:1357-1374
Publication Year :
2020
Publisher :
Oxford University Press (OUP), 2020.

Abstract

While circular data occur in a wide range of scientific fields, the methodology for distributional modeling and probabilistic forecasting of circular response variables is rather limited. Most of the existing methods are built on the framework of generalized linear and additive models, which are often challenging to optimize and to interpret. Therefore, we suggest circular regression trees and random forests as an intuitive alternative approach that is relatively easy to fit. Building on previous ideas for trees modeling circular means, we suggest a distributional approach for both trees and forests yielding probabilistic forecasts based on the von Mises distribution. The resulting tree-based models simplify the estimation process by using the available covariates for partitioning the data into sufficiently homogeneous subgroups so that a simple von Mises distribution without further covariates can be fitted to the circular response in each subgroup. These circular regression trees are straightforward to interpret, can capture nonlinear effects and interactions, and automatically select the relevant covariates that are associated with either location and/or scale changes in the von Mises distribution. Combining an ensemble of circular regression trees to a circular regression forest yields a local adaptive likelihood estimator for the von Mises distribution that can regularize and smooth the covariate effects. The new methods are evaluated in a case study on probabilistic wind direction forecasting at two Austrian airports, considering other common approaches as a benchmark.

Details

ISSN :
14679876 and 00359254
Volume :
69
Database :
OpenAIRE
Journal :
Journal of the Royal Statistical Society Series C: Applied Statistics
Accession number :
edsair.doi.dedup.....ea03e4c89fd2c00af6f3d16b2cc57298
Full Text :
https://doi.org/10.1111/rssc.12437