Probabilistic time series forecasts with autoregressive transformation models

2023 | journal article. A publication with affiliation to the University of Göttingen.

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​Probabilistic time series forecasts with autoregressive transformation models​
Rügamer, D.; Baumann, P. F. M.; Kneib, T. & Hothorn, T.​ (2023) 
Statistics and Computing33(2).​ DOI: https://doi.org/10.1007/s11222-023-10212-8 

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Authors
Rügamer, David; Baumann, Philipp F. M.; Kneib, Thomas; Hothorn, Torsten
Abstract
Abstract Probabilistic forecasting of time series is an important matter in many applications and research fields. In order to draw conclusions from a probabilistic forecast, we must ensure that the model class used to approximate the true forecasting distribution is expressive enough. Yet, characteristics of the model itself, such as its uncertainty or its feature-outcome relationship are not of lesser importance. This paper proposes Autoregressive Transformation Models (ATMs), a model class inspired by various research directions to unite expressive distributional forecasts using a semi-parametric distribution assumption with an interpretable model specification. We demonstrate the properties of ATMs both theoretically and through empirical evaluation on several simulated and real-world forecasting datasets.
Issue Date
2023
Journal
Statistics and Computing 
ISSN
0960-3174
eISSN
1573-1375
Language
English

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