Circular Regression Trees and Forests with an Application to Probabilistic Wind Direction Forecasting
Moritz N. Lang, Lisa Schlosser, Torsten Hothorn, Georg J. Mayr, Reto Stauffer, Achim Zeileis

TL;DR
This paper introduces circular regression trees and forests for probabilistic modeling of circular data, specifically applied to wind direction forecasting, offering an interpretable and flexible alternative to existing methods.
Contribution
It proposes a distributional approach using von Mises distribution within tree and forest models, enabling probabilistic forecasts with automatic covariate selection and capturing nonlinear effects.
Findings
Effective in wind direction forecasting at Austrian airports
Outperforms traditional methods in probabilistic accuracy
Provides interpretable models with covariate selection
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…
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