version 0.2.22
Fixes
plot_posterior() function with spike and slab
priors 
Changes
- unifies back-end of 
prior_mixture() and
prior_spike_and_slab() 
version 0.2.21
Fixes
JAGS_formula() function now replaces removed missing
intercept with 0 (so the model matrix remains unchanged) 
- resetting 
silent = FALSE argument in the
JAGS_fit() function now fits the model non-silently
again 
version 0.2.20
Features
- extending prior functions to accept 
expression()
instead of a parameter, such objects can be use to create prior
distributions that depend on other parameters in JAGS 
- extending the formula interface of 
JAGS_fit() function
to accept expressions that are appended as literal text to the generated
JAGS formula 
- extending the formula interface of 
JAGS_fit() function
to handle uncorrelated random effects via (x||y)
(lme4-like) notation 
Fixes
JAGS_estimates_table not printing formula prefix when
only spike and slab priors are supplied 
version 0.2.19
Features
- adds 
max_extend option to autofit_control
argument in JAGS_fit() to limit the number of iterations
for the model extension 
- adds JASP progress bar integration
 
Fixes
JAGS_diagnostics_density() plots for mixture
distributions 
- prior and posterior 
plot_posterior() for simple
as_mixed_posteriors objects 
JAGS_evaluate_formula() for mixture and spike and slab
priors 
- set Bayes factors based on alternative only prior distributions to
NA
 
- better handling of posterior samples in
.fit_to_posterior() 
version 0.2.18
Features
- adding 
prior_mixture() function for creating a mixture
of prior distributions 
- adding 
as_mixed_posteriors() and
as_marginal_inference() functions for a single JAGS models
(with spike and slab or mixture priors) to enabling tables and figures
based on the corresponding output 
- adding 
interpret2() function for another way of
creating textual summaries without the need of inference and samples
objects 
- speedup and improvements to the
runjags_estimates_table() function 
Fixes
- small fixes for expansion of the RoBMA functionality
 
version 0.2.17
Features
- adding informed prior distributions for dichotomous and time to
event outcomes based on Cochrane Database of Systematic Reviews to
prior_informed() function 
- adding bridge object convenience function
bridge_object() (fixes:
https://github.com/FBartos/BayesTools/issues/28) 
- adding 
Na/NaN tests for check_ functions
(fixes: https://github.com/FBartos/BayesTools/issues/26) 
Fixes
- ability to run more than 4 chains (fixes:
https://github.com/FBartos/BayesTools/issues/20)
 
version 0.2.16
Features
- update an existing JAGS fit with 
JAGS_extend()
function 
- new element of the 
autofit_control argument in
JAGS_fit(): "restarts" allows to restart model
initialization up to restarts times in case of failure 
version 0.2.15
Fixes
- fixing repeated print of previous prior distribution in
model_summary_table() in case of
prior_none() 
version 0.2.14
Features
- adding 
contrast = "meandif" to the
prior_factor function which generates identical prior
distributions for difference between the grand mean and each factor
level 
- adding 
contrast = "independent" to the
prior_factor function which generates independent identical
prior distributions for each factor level 
remove_column function for removing columns from
BayesTools_table objects without breaking the attributes
etc… 
- adding empty table functions
(https://github.com/FBartos/BayesTools/issues/10)
 
- adding 
remove_parameters argument to
model_summary_table() 
- adding multivariate point distribution functions
 
- adding 
point prior distribution as option to
prior_factor with "meandif" and
"orthonormal" contrasts 
- adding 
marginal_posterior() function which creates
marginal prior and posterior distributions (according to a model formula
specification) 
- adding 
Savage_Dickey_BF() function to compute density
ratio Bayes factors based on marginal_posterior
objects 
- adding 
marginal_inference() function to combine
information from marginal_posterior() and
Savage_Dickey_BF() 
- adding 
marginal_estimates_table() function to summarize
marginal_inference() objects 
- adding 
plot_marginal() function to visualize
marginal_inference() objects 
Changes
contrast = "meandif" is now the default setting for
prior_factor function 
- depreciating 
transform_orthonormal argument in favor of
more general transform_factors argument 
- switching 
dummy contrast/factor attributes to
treatment for consistency
(https://github.com/FBartos/BayesTools/issues/23) 
Fixes
- zero length inputs to 
check_bool(),
check_char(), check_real(),
check_int(), and check_list() do not throw
error if allow_NULL = TRUE 
- properly aggregating identical priors in the plotting function
(previously overlying multiple spikes on top of each other when
attributes did not match)
 
student-t allowed as a prior distribution
name 
- fixing factor contrast settings in
JAGS_evaluate_formula 
- fixing spike prior transformations
 
version 0.2.13
Features
runjags_estimates_table() function can now handle
factor transformations 
plot_posterior function can now handle factor
transformations 
- ability to remove parameters from the
runjags_estimates_table() function via the
remove_parameters argument 
Fixes
- inability to deal with constant intercept in marglik formula
calculation
 
runjags_estimates_table() function can now remove
factor spike prior distributions 
- marginal likelihood calculation for factor prior distributions with
spike
 
- mixing samples from vector priors of length 1
 
- same prior distributions not always combined together properly when
part of them was generated via the formula interface
 
version 0.2.12
Features
stan_estimates_summary() function 
- reducing dependency on runjags/rjags
 
Fixes
- dealing with posterior samples from rstan
 
- dealing with vector posterior samples
 
- fixing MCMC error of SD calculation for transformed samples
(previously reported 100 times lower)
 
version 0.2.11
Features
- adding Bernoulli prior distribution
 
- adding spike and slab type of prior distributions (without marginal
likelihood computations/model-averaging capabilities)
 
- new vignette comparing Bayes factor computation via marginal
likelihood and spike and slab priors
 
Fixes
- when a transformation is applied, JAGS summary tables now produce
the mean of the transformed variable (previous versions incorrectly
returned transformation of the mean)
 
Changes
- runjags_XXX_table functions are now also exported as
JAGS_XXX_functions for consistency with the rest of the code
 
version 0.2.10
Features
- trace, density, and autocorrelation diagnostic plots for JAGS
models
 
version 0.2.9
Fixes
- dealing with NaNs in inclusion Bayes factors due to overflow with
very large marginal likelihoods
 
version 0.2.8
Fixes
- dealing with point prior distributions in
JAGS_marglik_parameters_formula function 
- posterior samples dropping name in
runjags_estimates_table function 
ensemble_summary_table and
ensemble_diagnostics_table function can create table
without model components 
version 0.2.7
Features
JAGS_evaluate_formula for evaluating formulas based on
data and posterior samples (for creating predictions etc)
 
JAGS_parameter_names for transforming formula names
into the JAGS syntax 
version 0.2.6
Features
plot_models implementation for factor predictors 
format_parameter_names for cleaning parameter names
from JAGS 
mean, sd, and var functions
now return the corresponding values for differences from the mean for
the orthonormal prior distributions 
Fixes
- proper splitting of transformed posterior samples based on
orthonormal contrasts in 
runjags_summary_table function
(previous version crashed under other than default fit_JAGS
settings) 
- always showing name of the comparison group for treatment contrasts
in 
runjags_summary_table function 
- better handling of transformed parameter names in
plot_models function 
version 0.2.5
Features
add_column function for extending
BayesTools_table objects without breaking the attributes
etc… 
- ability to suppress the formula parameter prefix in
BayesTools_table functions with with
formula_prefix argument 
Fixes
- allowing to pass point prior distributions for factor type
predictors
 
version 0.2.4
Features
- adding possibility to multiply a (formula) prior parameter by
another term (via 
multiply_by attribute passed with the
prior) 
- t-test example vignette
 
version 0.2.3
Fixes
- fixing error from trying to rename formula parameters in BayesTools
tables when multiple parameters were nested within a component
 
version 0.2.2
Fixes
- fixing layering of prior and posterior plots in
plot_posterior (posterior is now plotted over the
prior) 
version 0.2.1
Fixes
- fixing JAGS code for multivariate-t prior distribution
 
version 0.2.0
Changes
- ensemble inference, summary, and plot functions now extract the
prior list from attribute of the fit objects (previously, the prior_list
needed to be passed for each model within the model_list as the priors
argument
 
Features
- adding formula interface for fitting and computing marginal
likelihood of JAGS models
 
- adding factor prior distributions (with treatment and orthonormal
contrasts)
 
version 0.1.4
Fixes
- fixing DOIs in the references file
 
- adds marglik argument 
inclusion_BF to deal with
over/underflow (Issue #9) 
- better passing of BF names through the
ensemble_inference_table() (Issue #11) 
Features
- adding logBF and BF01 options to 
ensemble_summary_table
(Issue #7) 
version 0.1.3
Features
prior_informed function for creating informed prior
distributions based on the past psychological and medical research 
version 0.1.2
Fixes
prior.plot can’t plot “spike” with
plot_type == "ggplot" (Issue #6) 
MCMC error/SD print names in BayesTools tables (Issue
#8) 
JAGS_bridgesampling_posterior unable to add a parameter
via add_parameters 
Features
interpret function for creating textual summaries based
on inference and samples objects 
version 0.1.1
Fixes
plot_posterior fails with only mu & PET samples
(Issue #5) 
- ordering by “probabilities” does not work in ‘plot_models’ (Issue
#3)
 
- BF goes to NaN when only a single model is present in
‘models_inference’ (Issue #2)
 
- summary tables unit tests unable to deal with numerical
precision
 
- problems with aggregating samples across multiple spikes in
`plot_posterior’
 
Features
- allow density.prior with range lower == upper (Issue #4)
 
- moving rstan towards suggested packages
 
version 0.1.0
version 0.0.0.9010
- plotting functions for models
 
version 0.0.0.9009
- plotting functions for posterior samples
 
version 0.0.0.9008
- plotting functions for mixture of priors
 
version 0.0.0.9007
- improvements to prior plotting functions
 
version 0.0.0.9006
- ensemble and model summary tables functions
 
version 0.0.0.9005
- posterior mixing functions
 
version 0.0.0.9004
- model-averaging functions
 
version 0.0.0.9003
- JAGS fitting related functions
 
version 0.0.0.9002
- JAGS bridgesampling related functions
 
version 0.0.0.9001
- JAGS model building related functions
 
version 0.0.0.9000
- priors and related methods