A random forest-based approach to combining and ranking seasonality tests
Year of publication: |
2023
|
---|---|
Authors: | Ollech, Daniel ; Webel, Karsten |
Published in: |
Journal of econometric methods. - Berlin : de Gruyter, ISSN 2156-6674, ZDB-ID 2684112-5. - Vol. 12.2023, 1, p. 117-130
|
Subject: | binary classification | conditional inference trees | correlated predictors | simulation study | supervised machine learning | Prognoseverfahren | Forecasting model | Simulation | Klassifikation | Classification | Künstliche Intelligenz | Artificial intelligence | Ranking-Verfahren | Ranking method | Schätztheorie | Estimation theory | Korrelation | Correlation |
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