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@article{ Tutz2022,
 title = {Sparser Ordinal Regression Models Based on Parametric and Additive Location-Shift Approaches},
 author = {Tutz, Gerhard and Berger, Moritz},
 journal = {International Statistical Review},
 number = {2},
 pages = {306-327},
 volume = {90},
 year = {2022},
 issn = {1751-5823},
 doi = {https://doi.org/10.1111/insr.12484},
 urn = {https://nbn-resolving.org/urn:nbn:de:0168-ssoar-93052-8},
 abstract = {The potential of location-shift models to find adequate models between the proportional odds model and the non-proportional odds model is investigated. It is demonstrated that these models are very useful in ordinal modelling. While proportional odds models are often too simple, non-proportional odds models are typically unnecessary complicated and seem widely dispensable. In addition, the class of location-shift models is extended to allow for smooth effects. The additive location-shift model contains two functions for each explanatory variable, one for the location and one for dispersion. It is much sparser than hard-to-handle additive models with category-specific covariate functions but more flexible than common vector generalised additive models. An R package is provided that is able to fit parametric and additive location-shift models.},
 keywords = {Regression; regression; Modell; model; Statistik; statistics}}