| bayesmeta-package | Bayesian Random-Effects Meta-Analysis |
| bayesmeta | Bayesian random-effects meta-analysis |
| bayesmeta.default | Bayesian random-effects meta-analysis |
| bayesmeta.escalc | Bayesian random-effects meta-analysis |
| Cochran1954 | Fly counts example data |
| CrinsEtAl2014 | Pediatric liver transplant example data |
| dhalfcauchy | Lomax, half-normal, half-t, half-Cauchy, scaled inverse chi-squared and Rayleigh densities. |
| dhalfnormal | Lomax, half-normal, half-t, half-Cauchy, scaled inverse chi-squared and Rayleigh densities. |
| dhalft | Lomax, half-normal, half-t, half-Cauchy, scaled inverse chi-squared and Rayleigh densities. |
| dinvchisq | Lomax, half-normal, half-t, half-Cauchy, scaled inverse chi-squared and Rayleigh densities. |
| dlomax | Lomax, half-normal, half-t, half-Cauchy, scaled inverse chi-squared and Rayleigh densities. |
| drayleigh | Lomax, half-normal, half-t, half-Cauchy, scaled inverse chi-squared and Rayleigh densities. |
| forest.bayesmeta | Generate a forest plot for a 'bayesmeta' object (based on the 'metafor' package's plotting functions). |
| HinksEtAl2010 | JIA example data |
| Peto1980 | Aspirin after myocardial infarction example data |
| plot.bayesmeta | Generate summary plots for a 'bayesmeta' object. |
| print.bayesmeta | Bayesian random-effects meta-analysis |
| RhodesEtAlParameters | Heterogeneity priors for continuous outcomes (standardized mean differences) as proposed by Rhodes et al. (2015). |
| RhodesEtAlPrior | Heterogeneity priors for continuous outcomes (standardized mean differences) as proposed by Rhodes et al. (2015). |
| Rubin1981 | 8-schools example data |
| SidikJonkman2007 | Postoperative complication odds example data |
| SnedecorCochran | Artificial insemination of cows example data |
| summary.bayesmeta | Bayesian random-effects meta-analysis |
| TurnerEtAlParameters | (Log-Normal) heterogeneity priors for binary outcomes as proposed by Turner et al. (2015). |
| TurnerEtAlPrior | (Log-Normal) heterogeneity priors for binary outcomes as proposed by Turner et al. (2015). |