Using the softplus function to construct alternative link functions in generalized linear models and beyond

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

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​Using the softplus function to construct alternative link functions in generalized linear models and beyond​
Wiemann, P. F. V.; Kneib, T. & Hambuckers, J.​ (2023) 
Statistical Papers,.​ DOI: https://doi.org/10.1007/s00362-023-01509-x 

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Authors
Wiemann, Paul F. V.; Kneib, Thomas; Hambuckers, Julien
Abstract
Abstract Response functions that link regression predictors to properties of the response distribution are fundamental components in many statistical models. However, the choice of these functions is typically based on the domain of the modeled quantities and is usually not further scrutinized. For example, the exponential response function is often assumed for parameters restricted to be positive, although it implies a multiplicative model, which is not necessarily desirable or adequate. Consequently, applied researchers might face misleading results when relying on such defaults. For parameters restricted to be positive, we propose to construct alternative response functions based on the softplus function. These response functions are differentiable and correspond closely to the identity function for positive values of the regression predictor implying a quasi-additive model. Consequently, the proposed response functions allow for an additive interpretation of the estimated effects by practitioners and can be a better fit in certain data situations. We study the properties of the newly constructed response functions and demonstrate the applicability in the context of count data regression and Bayesian distributional regression. We contrast our approach to the commonly used exponential response function.
Issue Date
2023
Journal
Statistical Papers 
ISSN
0932-5026
eISSN
1613-9798
Language
English
Sponsor
Deutsche Forschungsgemeinschaft http://dx.doi.org/10.13039/501100001659
National Bank of Belgium
Georg-August-Universität Göttingen 501100003385

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