Runs a Bayesian meta-analysis assuming that the mean effect \(d\) in each study is identical (i.e., a fixed-effects analysis).
meta_fixed(
y,
SE,
labels,
data,
d = prior("norm", c(mean = 0, sd = 0.3)),
rscale_contin = 1/2,
rscale_discrete = sqrt(2)/2,
centering = TRUE,
logml = "integrate",
summarize = "integrate",
ci = 0.95,
rel.tol = .Machine$double.eps^0.3,
silent_stan = TRUE,
...
)
effect size per study. Can be provided as (1) a numeric vector, (2)
the quoted or unquoted name of the variable in data
, or (3) a
formula
to include discrete or continuous moderator
variables.
standard error of effect size for each study. Can be a numeric
vector or the quoted or unquoted name of the variable in data
optional: character values with study labels. Can be a
character vector or the quoted or unquoted name of the variable in
data
data frame containing the variables for effect size y
,
standard error SE
, labels
, and moderators per study.
prior
distribution on the average effect size d
. The
prior probability density function is defined via prior
.
scale parameter of the JZS prior for the continuous covariates.
scale parameter of the JZS prior for discrete moderators.
whether continuous moderators are centered.
how to estimate the log-marginal likelihood: either by numerical
integration ("integrate"
) or by bridge sampling using MCMC/Stan
samples ("stan"
). To obtain high precision with logml="stan"
,
many MCMC samples are required (e.g., logml_iter=10000, warmup=1000
).
how to estimate parameter summaries (mean, median, SD,
etc.): Either by numerical integration (summarize = "integrate"
) or
based on MCMC/Stan samples (summarize = "stan"
).
probability for the credibility/highest-density intervals.
relative tolerance used for numerical integration using
integrate
. Use rel.tol=.Machine$double.eps
for
maximal precision (however, this might be slow).
whether to suppress the Stan progress bar.
further arguments passed to rstan::sampling
(see
stanmodel-method-sampling
). Relevant MCMC settings
concern the number of warmup samples that are discarded
(warmup=500
), the total number of iterations per chain
(iter=2000
), the number of MCMC chains (chains=4
), whether
multiple cores should be used (cores=4
), and control arguments that
make the sampling in Stan more robust, for instance:
control=list(adapt_delta=.97)
.
# NOT RUN {
data(towels)
### Bayesian Fixed-Effects Meta-Analysis (H1: d>0 Cauchy)
mf <- meta_fixed(logOR, SE, study, data = towels,
d = prior("norm", c(mean=0, sd=.3), lower=0))
mf
plot_posterior(mf)
plot_forest(mf)
# }
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