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Smooth additive quantile regression models, fitted using the methods of Fasiolo et al. (2017) <arXiv:1707.03307>. Differently from 'quantreg', the smoothing parameters are estimated automatically by marginal loss minimization, while the regression coefficients are estimated using either PIRLS or Newton algorithm. The learning rate is determined so that the Bayesian credible intervals of the estimated effects have approximately the correct coverage. The main function is qgam() which is similar to gam() in 'mgcv', but fits non-parametric quantile regression models.

copied from cf-post-staging / r-qgam
Type Size Name Uploaded Downloads Labels
conda 3.3 MB | win-64/r-qgam-1.3.2-r40hda5aaf8_1.tar.bz2  5 years and 9 months ago 1047 main
conda 3.3 MB | win-64/r-qgam-1.3.2-r36hda5aaf8_1.tar.bz2  5 years and 9 months ago 1048 main
conda 3.3 MB | osx-64/r-qgam-1.3.2-r36h17f1fa6_1.tar.bz2  5 years and 9 months ago 328 main
conda 3.2 MB | osx-64/r-qgam-1.3.2-r40h17f1fa6_1.tar.bz2  5 years and 9 months ago 347 main
conda 3.3 MB | linux-64/r-qgam-1.3.2-r40hcdcec82_1.tar.bz2  5 years and 9 months ago 4081 main
conda 3.2 MB | linux-64/r-qgam-1.3.2-r36hcdcec82_1.tar.bz2  5 years and 9 months ago 4055 main
conda 3.3 MB | win-64/r-qgam-1.3.2-r36hda5aaf8_0.tar.bz2  5 years and 9 months ago 1069 main
conda 3.3 MB | win-64/r-qgam-1.3.2-r35hda5aaf8_0.tar.bz2  5 years and 9 months ago 1070 main
conda 3.3 MB | osx-64/r-qgam-1.3.2-r36h17f1fa6_0.tar.bz2  5 years and 9 months ago 348 main
conda 3.3 MB | osx-64/r-qgam-1.3.2-r35h17f1fa6_0.tar.bz2  5 years and 9 months ago 326 main
conda 3.2 MB | linux-64/r-qgam-1.3.2-r36hcdcec82_0.tar.bz2  5 years and 9 months ago 3960 main
conda 3.3 MB | linux-64/r-qgam-1.3.2-r35hcdcec82_0.tar.bz2  5 years and 9 months ago 3918 main

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