NEWS
brms.mmrm 1.1.1 (2024-10-02)
- Use FEV data in usage vignette.
- Show how to visualize prior vs posterior in the usage vignette.
- Add a
center argument to brms_formula.default() and explain intercept parameter interpretation concerns (#128).
brms.mmrm 1.1.0 (2024-07-29)
- Add
brm_marginal_grid().
- Show posterior samples of
sigma in brm_marginal_draws() and brm_marginal_summaries().
- Allow
outcome = "response" with reference_time = NULL. Sometimes raw response is analyzed but the data has no baseline time point.
- Preserve factors in
brm_data() and encourage ordered factors for the time variable (#113).
- Add
brm_data_chronologize() to ensure the correctness of the time variable.
- Do not drop columns in
brm_data(). This helps brm_data_chronologize() operate correctly after calls to brm_data().
- Add new elements
brms.mmrm_data and brms.mmrm_formula to the brms fitted model object returned by brm_model().
- Take defaults
data and formula from the above in brm_marginal_draws().
- Set the default value of
effect_size to attr(formula, "brm_allow_effect_size").
- Remove defaults from some arguments to
brm_data() and document examples.
- Deprecate the
role argument of brm_data() in favor of reference_time (#119).
- Add a new
model_missing_outcomes in brm_formula() to optionally impute missing values during model fitting as described at https://paulbuerkner.com/brms/articles/brms_missings.html (#121).
- Add a new
imputed argument to accept a mice multiply imputed dataset ("mids") in brm_model() (#121).
- Add a
summary() method for brm_transform_marginal() objects.
- Do not recheck the rank of the formula in
brm_transform_marginal().
- Support constrained longitudinal data analysis (cLDA) for informative prior archetypes
brm_archetype_cells(), brm_archetype_effects(), brm_archetype_successive_cells(), and brm_archetype_successive_effects() (#125). We cannot support cLDA for brm_archetype_average_cells() or brm_archetype_average_effects() because then some parameters would no longer be averages of others.
brms.mmrm 1.0.1 (2024-06-25)
- Handle outcome
NAs in get_draws_sigma().
- Improve
summary() messages for informative prior archetypes.
- Rewrite the
archetypes.Rmd vignette using the FEV dataset from the mmrm package.
- Add
brm_prior_template().
brms.mmrm 1.0.0 (2024-06-04)
New features
- Add informative prior archetypes (#96, #101).
- Add [brm_formula_sigma()] to allow more flexibility for modeling standard deviations as distributional parameters (#102). Due to the complexities of computing marginal means of standard deviations in rare scenarios, [brm_marginal_draws()] does not return effect size if [brm_formula_sigma()] uses baseline or covariates.
Guardrails to ensure the appropriateness of marginal mean estimation
- Require a new
formula argument in brm_marginal_draws().
- Change class name
"brm_data" to "brms_mmrm_data" to align with other class names.
- Create a special
"brms_mmrm_formula" class to wrap around the model formula. The class ensures that formulas passed to the model were created by brms_formula(), and the attributes store the user's choice of fixed effects.
- Create a special
"brms_mmrm_model" class for fitted model objects. The class ensures that fitted models were created by brms_model(), and the attributes store the "brms_mmrm_formula" object in a way that brms itself cannot modify.
- Deprecate
use_subgroup in brm_marginal_draws(). The subgroup is now always part of the reference grid when declared in brm_data(). To marginalize over subgroup, declare it in covariates instead.
- Prevent overplotting multiple subgroups in
brm_plot_compare().
- Update the subgroup vignette to reflect all the changes above.
Custom estimation of marginal means
- Implement a new
brm_transform_marginal() to transform model parameters to marginal means (#53).
- Use
brm_transform_marginal() instead of emmeans in brm_marginal_draws() to derive posterior draws of marginal means based on posterior draws of model parameters (#53).
- Explain the custom marginal mean calculation in a new
inference.Rmd vignette.
- Rename
methods.Rmd to model.Rmd since inference.Rmd also discusses methods.
Other improvements
- Extend
brm_formula() and brm_marginal_draws() to optionally model homogeneous variances, as well as ARMA, AR, MA, and compound symmetry correlation structures.
- Restrict
brm_model() to continuous families with identity links.
- In
brm_prior_simple(), deprecate the correlation argument in favor of individual correlation-specific arguments such as unstructured and compound_symmetry.
- Ensure model matrices are full rank (#99).
brms.mmrm 0.1.0 (2024-02-15)
- Deprecate
brm_simulate() in favor of brm_simulate_simple() (#3). The latter has a more specific name to disambiguate it from other simulation functions, and its parameterization conforms to the one in the methods vignette.
- Add new functions for nuanced simulations:
brm_simulate_outline(), brm_simulate_continuous(), brm_simulate_categorical() (#3).
- In
brm_model(), remove rows with missing responses. These rows are automatically removed by brms anyway, and by handling by handling this in brms.mmrm, we avoid a warning.
- Add subgroup analysis functionality and validate the subgroup model with simulation-based calibration (#18).
- Zero-pad numeric indexes in simulated data so the levels sort as expected.
- In
brm_data(), deprecate level_control in favor of reference_group.
- In
brm_data(), deprecate level_baseline in favor of reference_time.
- In
brm_formula(), deprecate arguments effect_baseline, effect_group, effect_time, interaction_baseline, and interaction_group in favor of baseline, group, time, baseline_time, and group_time, respectively.
- Propagate values in the
missing column in brm_data_change() such that a value in the change from baseline is labeled missing if either the baseline response is missing or the post-baseline response is missing.
- Change the names in the output of
brm_marginal_draws() to be more internally consistent and fit better with the addition of subgroup-specific marginals (#18).
- Allow
brm_plot_compare() and brm_plot_draws() to select the x axis variable and faceting variables.
- Allow
brm_plot_compare() to choose the primary comparison of interest (source of the data, discrete time, treatment group, or subgroup level).
brms.mmrm 0.0.2 (2023-08-18)
- Fix grammatical issues in the description.
brms.mmrm 0.0.1