pblm

An R package to fit bivariate additive categorical regression models

https://github.com/marcoenea/pblm

Science Score: 13.0%

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Keywords

additive association-model bivariate-categorical-regression bivariate-logistic-model bivariate-ordered-model dale-model global-log-odds-ratio global-logits maximum-likelihood-estimation penalty-term semiparametric smoothing
Last synced: 5 months ago · JSON representation

Repository

An R package to fit bivariate additive categorical regression models

Basic Info
  • Host: GitHub
  • Owner: MarcoEnea
  • Language: R
  • Default Branch: master
  • Size: 1.15 MB
Statistics
  • Stars: 0
  • Watchers: 1
  • Forks: 0
  • Open Issues: 0
  • Releases: 0
Topics
additive association-model bivariate-categorical-regression bivariate-logistic-model bivariate-ordered-model dale-model global-log-odds-ratio global-logits maximum-likelihood-estimation penalty-term semiparametric smoothing
Created over 7 years ago · Last pushed over 4 years ago

https://github.com/MarcoEnea/pblm/blob/master/

# pblm
An R package to fit bivariate additive categorical regression models

This is an R package, by Marco Enea, to fit bivariate additive categorical regression for moderate size datasets. The two responses can be nominal, ordinal or mixed nominal/ordinal. Partial proportional odds models with (non-)uniform association structure can be fitted, with the possibility to specify several logit types and parametrizations for the marginals and the association, including the Dale model. The marginal parameters and the association structure can also be smoothed, and/or the parameter space regularized, by using penalty terms. The package also implements P-splines. 

The Supplementary Material folder contains R code for examples and simulations reported in the pubblication: 

Enea, M., Lovison, G. 2018. A penalized approach for the bivariate ordered logistic model with applications to social and medical data. Statistical Modelling, DOI: 10.1177/1471082X18782063.  

To install this package on R:

install.packages("devtools")

library(devtools)

install_github("MarcoEnea/pblm/pblm")

Owner

  • Name: Marco Enea
  • Login: MarcoEnea
  • Kind: user
  • Company: University of Palermo

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  • Total packages: 1
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    • cran 146 last-month
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  • Total versions: 1
  • Total maintainers: 1
cran.r-project.org: pblm

Bivariate Additive Marginal Regression for Categorical Responses

  • Versions: 1
  • Dependent Packages: 0
  • Dependent Repositories: 0
  • Downloads: 146 Last month
Rankings
Dependent packages count: 26.2%
Dependent repos count: 32.3%
Average: 48.3%
Downloads: 86.4%
Maintainers (1)
Last synced: 6 months ago