WinBUGS is part of the BUGS project, which aims to make practical MCMC methods available to applied statisticians. WinBUGS can use either a standard ’point-and-click’ windows interface for controlling the analysis, or can construct the model using a graphical interface called DoodleBUGS. WinBUGS is a stand-alone program, although it can be called from other software.

References in zbMATH (referenced in 480 articles , 1 standard article )

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  1. Broemeling, Lyle D.: Bayesian inference for stochastic processes (2018)
  2. Duan, Fengjun; Wang, Guanjun; Wang, Huan: Inverse Gaussian process models for bivariate degradation analysis: a Bayesian perspective (2018)
  3. Edgar Merkle; Yves Rosseel: blavaan: Bayesian Structural Equation Models via Parameter Expansion (2018)
  4. Gao, Guangyuan; Meng, Shengwang: Stochastic claims reserving via a Bayesian spline model with random loss ratio effects (2018)
  5. Jingyi Guo; Andrea Riebler: meta4diag: Bayesian Bivariate Meta-Analysis of Diagnostic Test Studies for Routine Practice (2018)
  6. Jing Zhao; Jian’an Luan; Peter Congdon: Bayesian Linear Mixed Models with Polygenic Effects (2018)
  7. Kim, Hea-Jung: Bayesian hierarchical robust factor analysis models for partially observed sample-selection data (2018)
  8. Lindqvist, Bo H.; Taraldsen, Gunnar: On the proper treatment of improper distributions (2018)
  9. Romeo, Jose S.; Meyer, Renate; Gallardo, Diego I.: Bayesian bivariate survival analysis using the power variance function copula (2018)
  10. Wagner Bonat: Multiple Response Variables Regression Models in R: The mcglm Package (2018)
  11. Alvares, Danilo; Armero, Carmen; Forte, Anabel; Chopin, Nicolas: Sequential Monte Carlo methods in random intercept models for longitudinal data (2017)
  12. Barber, Xavier; Conesa, David; López-Quílez, Antonio; Mayoral, Asunción; Morales, Javier; Barber, Antoni: Bayesian hierarchical models for analysing the spatial distribution of bioclimatic indices (2017)
  13. Bob Carpenter and Andrew Gelman and Matthew Hoffman and Daniel Lee and Ben Goodrich and Michael Betancourt and Marcus Brubaker and Jiqiang Guo and Peter Li and Allen Riddell: Stan: A Probabilistic Programming Language (2017)
  14. Chen Dong; Michel Wedel: BANOVA: An R Package for Hierarchical Bayesian ANOVA (2017)
  15. Cho, Sun-Joo; Goodwin, Amanda P.: Modeling learning in doubly multilevel binary longitudinal data using generalized linear mixed models: an application to measuring and explaining word learning (2017)
  16. Congdon, Peter: Quantile regression for overdispersed count data: a hierarchical method (2017)
  17. Culpepper, Ryan; Cobb, Andrew: Contextual equivalence for probabilistic programs with continuous random variables and scoring (2017)
  18. Draper, David; Terenin, Alexander: Comment: A brief survey of the current state of play for Bayesian computation in data science at big-data scale (2017)
  19. Elfadaly, Fadlalla G.; Garthwaite, Paul H.: Eliciting Dirichlet and Gaussian copula prior distributions for multinomial models (2017)
  20. Erosheva, Elena A.; Curtis, S. McKay: Dealing with reflection invariance in Bayesian factor analysis (2017)

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