Allows for the specification of semi-structured deep distributional regression models which are fitted in a neural network as
proposed by Ruegamer et al. (2023) <doi:10.18637/jss.v105.i02>.
Predictors can be modeled using structured (penalized) linear effects, structured non-linear effects or using an unstructured deep network model.
Version: |
2.2.0 |
Depends: |
R (≥ 4.0.0), tensorflow (≥ 2.2.0), tfprobability, keras (≥
2.2.0) |
Imports: |
mgcv, dplyr, R6, reticulate (≥ 1.14), Matrix, magrittr, tfruns, methods, coro (≥ 1.0.3), torchvision (≥ 0.5.1), luz (≥ 0.4.0), torch |
Suggests: |
testthat, knitr, covr |
Published: |
2024-12-02 |
DOI: |
10.32614/CRAN.package.deepregression |
Author: |
David Ruegamer [aut, cre],
Christopher Marquardt [ctb],
Laetitia Frost [ctb],
Florian Pfisterer [ctb],
Philipp Baumann [ctb],
Chris Kolb [ctb],
Lucas Kook [ctb] |
Maintainer: |
David Ruegamer <david.ruegamer at gmail.com> |
License: |
GPL-3 |
NeedsCompilation: |
no |
Citation: |
deepregression citation info |
CRAN checks: |
deepregression results |