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brms

Overview

The brms package provides an interface to fit Bayesian generalized (non-)linear multivariate multilevel models using Stan, which is a C++ package for performing full Bayesian inference (see http://mc-stan.org/). The formula syntax is very similar to that of the package lme4 to provide a familiar and simple interface for performing regression analyses. A wide range of distributions and link functions are supported, allowing users to fit -- among others -- linear, robust linear, count data, survival, response times, ordinal, zero-inflated, hurdle, and even self-defined mixture models all in a multilevel context. Further modeling options include non-linear and smooth terms, auto-correlation structures, censored data, missing value imputation, and quite a few more. In addition, all parameters of the response distribution can be predicted in order to perform distributional regression. Multivariate models (i.e. models with multiple response variables) can be fitted, as well. Prior specifications are flexible and explicitly encourage users to apply prior distributions that actually reflect their beliefs. Model fit can easily be assessed and compared with posterior predictive checks, leave-one-out cross-validation, and Bayes factors.

Resources

How to use brms

library(brms)

As a simple example, we use poisson regression to model the seizure counts in epileptic patients to investigate whether the treatment (represented by variable Trt) can reduce the seizure counts and whether the effect of the treatment varies with the baseline number of seizures a person had before treatment (variable log_Base4_c). As we have multiple observations per person, a group-level intercept is incorporated to account for the resulting dependency in the data.

fit1 <- brm(count ~ log_Age_c + log_Base4_c * Trt + (1|patient), 
            data = epilepsy, family = poisson())

The results (i.e. posterior samples) can be investigated using

summary(fit1) 
#>  Family: poisson 
#>   Links: mu = log 
#> Formula: count ~ log_Age_c + log_Base4_c * Trt + (1 | patient) 
#>    Data: epilepsy (Number of observations: 236) 
#> Samples: 4 chains, each with iter = 2000; warmup = 1000; thin = 1;
#>          total post-warmup samples = 4000
#> 
#> Group-Level Effects: 
#> ~patient (Number of levels: 59) 
#>               Estimate Est.Error l-95% CI u-95% CI Eff.Sample Rhat
#> sd(Intercept)     0.55      0.07     0.43     0.70        966 1.01
#> 
#> Population-Level Effects: 
#>                  Estimate Est.Error l-95% CI u-95% CI Eff.Sample Rhat
#> Intercept            1.79      0.11     1.56     2.02       1093 1.00
#> log_Age_c            0.47      0.37    -0.26     1.22       1350 1.00
#> log_Base4_c          0.88      0.14     0.61     1.16       1142 1.00
#> Trt1                -0.33      0.16    -0.64    -0.03       1094 1.00
#> log_Base4_c:Trt1     0.34      0.22    -0.08     0.76       1192 1.00
#> 
#> Samples were drawn using sampling(NUTS). For each parameter, Eff.Sample 
#> is a crude measure of effective sample size, and Rhat is the potential 
#> scale reduction factor on split chains (at convergence, Rhat = 1).

On the top of the output, some general information on the model is given, such as family, formula, number of iterations and chains. Next, group-level effects are displayed seperately for each grouping factor in terms of standard deviations and (in case of more than one group-level effect per grouping factor; not displayed here) correlations between group-level effects. On the bottom of the output, population-level effects (i.e. regression coefficients) are displayed. If incorporated, autocorrelation effects and family specific parameters (e.g. the residual standard deviation 'sigma' in normal models) are also given.

In general, every parameter is summarized using the mean ('Estimate') and the standard deviation ('Est.Error') of the posterior distribution as well as two-sided 95% credible intervals ('l-95% CI' and 'u-95% CI') based on quantiles. We see that the coefficient of Trt is negative with a completely negative 95%-CI indicating that, on average, the treatment reduces seizure counts by some amount. Further, we find little evidence that the treatment effect varies with the baseline number of seizures.

The last two values ('Eff.Sample' and 'Rhat') provide information on how well the algorithm could estimate the posterior distribution of this parameter. If 'Rhat' is considerably greater than 1, the algorithm has not yet converged and it is necessary to run more iterations and / or set stronger priors.

To visually investigate the chains as well as the posterior distributions, we can use the plot method. If we just want to see results of the regression coefficients of Trt and log_Base4_c, we go for

plot(fit1, pars = c("Trt", "log_Base4_c")) 

A more detailed investigation can be performed by running launch_shinystan(fit1). To better understand the relationship of the predictors with the response, I recommend the marginal_effects method:

plot(marginal_effects(fit1, effects = "log_Base4_c:Trt"))

This method uses some prediction functionality behind the scenes, which can also be called directly. Suppose that we want to predict responses (i.e. seizure counts) of a person in the treatment group (Trt = 1) and in the control group (Trt = 0) with average age and average number of previous seizures. Than we can use

newdata <- data.frame(Trt = c(0, 1), log_Age_c = 0, log_Base4_c = 0)
predict(fit1, newdata = newdata, re_formula = NA)
#>      Estimate Est.Error 2.5%ile 97.5%ile
#> [1,]  6.00375  2.517999       2       11
#> [2,]  4.33475  2.087530       1        9

We need to set re_formula = NA in order not to condition of the group-level effects. While the predict method returns predictions of the responses, the fitted method returns predictions of the regression line.

fitted(fit1, newdata = newdata, re_formula = NA)
#>      Estimate Est.Error  2.5%ile 97.5%ile
#> [1,] 5.999611 0.6901598 4.773145 7.517943
#> [2,] 4.320005 0.4810514 3.385490 5.290729

Both methods return the same etimate (up to random error), while the latter has smaller variance, because the uncertainty in the regression line is smaller than the uncertainty in each response. If we want to predict values of the original data, we can just leave the newdata argument empty.

Suppose, we want to investigate whether there is overdispersion in the model, that is residual variation not accounted for by the response distribution. For this purpose, we include a second group-level intercept that captures possible overdispersion.

fit2 <- brm(count ~ log_Age_c + log_Base4_c * Trt + (1|patient) + (1|obs), 
            data = epilepsy, family = poisson())

We can then go ahead and compare both models via approximate leave-one-out cross-validation.

loo(fit1, fit2)
#>               LOOIC    SE
#> fit1        1347.06 74.22
#> fit2        1198.44 28.61
#> fit1 - fit2  148.62 54.52

Since smaller LOOIC values indicate better fit, we see that the model accounting for overdispersion fits substantially better. The post-processing methods we have shown so far are just the tip of the iceberg. For a full list of methods to apply on fitted model objects, type methods(class = "brmsfit").

FAQ

How do I install brms?

To install the latest release version from CRAN use

install.packages("brms")

The current developmental version can be downloaded from github via

if (!require("devtools")) {
  install.packages("devtools")
}
devtools::install_github("paul-buerkner/brms", dependencies = TRUE)

Because brms is based on Stan, a C++ compiler is required. The program Rtools (available on https://cran.r-project.org/bin/windows/Rtools/) comes with a C++ compiler for Windows. On Mac, you should install Xcode. For further instructions on how to get the compilers running, see the prerequisites section on https://github.com/stan-dev/rstan/wiki/RStan-Getting-Started.

I am new to brms. Where can I start?

Detailed instructions and case studies are given in the package's extensive vignettes. See vignette(package = "brms") for an overview. For documentation on formula syntax, families, and prior distributions see help("brm").

How do I cite brms?

Please cite one or more of the following publications:

  • Bürkner P. C. (2017). brms: An R Package for Bayesian Multilevel Models using Stan. Journal of Statistical Software. 80(1), 1-28. doi:10.18637/jss.v080.i01
  • Bürkner P. C. (in press). Advanced Bayesian Multilevel Modeling with the R Package brms. The R Journal.

Where do I ask questions, propose a new feature, or report a bug?

Questions can be asked on the Stan forums on Discourse. To propose a new feature or report a bug, please open an issue on GitHub.

How can I extract the generated Stan code?

If you have already fitted a model, just apply the stancode method on the fitted model object. If you just want to generate the Stan code without any model fitting, use the make_stancode function.

Can I avoid compiling models?

When you fit your model for the first time with brms, there is currently no way to avoid compilation. However, if you have already fitted your model and want to run it again, for instance with more samples, you can do this without recompilation by using the update method. For more details see help("update.brmsfit").

What is the difference between brms and rstanarm?

The rstanarm package is similar to brms in that it also allows to fit regression models using Stan for the backend estimation. Contrary to brms, rstanarm comes with precompiled code to save the compilation time (and the need for a C++ compiler) when fitting a model. However, as brms generates its Stan code on the fly, it offers much more flexibility in model specification than rstanarm. Also, multilevel models are currently fitted a bit more efficiently in brms. For detailed comparisons of brms with other common R packages implementing multilevel models, see vignette("brms_multilevel") and vignette("brms_overview").

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Version

Install

install.packages('brms')

Monthly Downloads

32,345

Version

2.3.0

License

GPL (>= 3)

Issues

Pull Requests

Stars

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Maintainer

PaulChristian Buerkner

Last Published

May 14th, 2018

Functions in brms (2.3.0)

bridge_sampler.brmsfit

Log Marginal Likelihood via Bridge Sampling
bayes_R2.brmsfit

Compute a Bayesian version of R-squared for regression models
brmshypothesis

Descriptions of brmshypothesis Objects
log_posterior.brmsfit

Extract Diagnostic Quantities of brms Models
custom_family

Custom Families in brms Models
loo_predict.brmsfit

Compute Weighted Expectations Using LOO
compare_ic

Compare Information Criteria of Different Models
coef.brmsfit

Extract Model Coefficients
control_params.brmsfit

Extract Control Parameters of the NUTS Sampler
get_prior

Overview on Priors for brms Models
fixef.brmsfit

Extract Population-Level Estimates
cor_fixed

Fixed user-defined covariance matrices
brmsfit-class

Class brmsfit of models fitted with the brms package
brmsformula-helpers

Linear and Non-linear formulas in brms
brmsformula

Set up a model formula for use in brms
cor_ma

MA(q) correlation structure
horseshoe

Set up a horseshoe prior in brms
marginal_effects.brmsfit

Display Marginal Effects of Predictors
expose_functions.brmsfit

Expose user-defined Stan functions
brm

Fit Bayesian Generalized (Non-)Linear Multivariate Multilevel Models
is.brmsfit

Checks if argument is a brmsfit object
expp1

Exponential function plus one.
brms-package

Bayesian Regression Models using 'Stan'
parse_bf

Parse Formulas of brms Models
cor_sar

Spatial simultaneous autoregressive (SAR) structures
pp_check.brmsfit

Posterior Predictive Checks for brmsfit Objects
combine_models

Combine Models fitted with brms
hypothesis.brmsfit

Non-Linear Hypothesis Testing
brmsfamily

Special Family Functions for brms Models
cor_ar

AR(p) correlation structure
cor_bsts

Basic Bayesian Structural Time Series
set_prior

Prior Definitions for brms Models
make_standata

Data for brms Models
is.brmsformula

Checks if argument is a brmsformula object
is.mvbrmsformula

Checks if argument is a mvbrmsformula object
is.cor_brms

Check if argument is a correlation structure
cor_arma

ARMA(p,q) correlation structure
logm1

Logarithm with a minus one offset.
parnames

Extract Parameter Names
inv_logit_scaled

Scaled inverse logit-link
loo.brmsfit

Compute the LOO information criterion
fitted.brmsfit

Extract Model Fitted Values of brmsfit Objects
cor_car

Spatial conditional autoregressive (CAR) structures
residuals.brmsfit

Extract Model Residuals from brmsfit Objects
inhaler

Clarity of inhaler instructions
is.mvbrmsterms

Checks if argument is a mvbrmsterms object
mm

Set up multi-membership grouping terms in brms
launch_shinystan.brmsfit

Interface to shinystan
make_conditions

Prepare Fully Crossed Conditions
cs

Category Specific Predictors in brms Models
posterior_interval.brmsfit

Compute posterior uncertainty intervals
logit_scaled

Scaled logit-link
brm_multiple

Run the same brms model on multiple datasets
is.brmsprior

Checks if argument is a brmsprior object
log_lik.brmsfit

Compute the Pointwise Log-Likelihood
is.brmsterms

Checks if argument is a brmsterms object
kfold.brmsfit

K-Fold Cross-Validation
stanvar

User-defined variables passed to Stan
standata.brmsfit

Extract Data passed to Stan
pairs.brmsfit

Create a matrix of output plots from a brmsfit object
make_stancode

Stan Code for brms Models
mmc

Multi-Membership Covariates
predict.brmsfit

Model Predictions of brmsfit Objects
ngrps.brmsfit

Number of levels
nsamples.brmsfit

Number of Posterior Samples
mo

Monotonic Predictors in brms Models
cor_arr

ARR(r) correlation structure
reloo

Compute exact cross-validation for problematic observations
epilepsy

Epileptic seizure counts
pp_average.brmsfit

Posterior predictive samples averaged across models
cor_brms

Correlation structure classes for the brms package
loo_model_weights.brmsfit

Model averaging via stacking or pseudo-BMA weighting.
plot.brmsfit

Trace and Density Plots for MCMC Samples
ranef.brmsfit

Extract Group-Level Estimates
pp_mixture.brmsfit

Posterior Probabilities of Mixture Component Memberships
theme_black

Black Theme for ggplot2 Graphics
restructure

Restructure Old brmsfit Objects
marginal_smooths.brmsfit

Display Smooth Terms
gp

Set up Gaussian process terms in brms
posterior_samples.brmsfit

Extract posterior samples
theme_default

Default bayesplot Theme for ggplot2 Graphics
stanplot.brmsfit

MCMC Plots Implemented in bayesplot
posterior_summary.brmsfit

Summarize Posterior Samples
print.brmsfit

Print a summary for a fitted model represented by a brmsfit object
print.brmsprior

Print method for brmsprior objects
mixture

Finite Mixture Families in brms
posterior_table

Table Creation for Posterior Samples
stancode.brmsfit

Extract Stan model code
summary.brmsfit

Create a summary of a fitted model represented by a brmsfit object
post_prob.brmsfit

Posterior Model Probabilities from Marginal Likelihoods
gr

Set up basic grouping terms in brms
kidney

Infections in kidney patients
update.brmsfit

Update brms models
lasso

Set up a lasso prior in brms
me

Predictors with Measurement Error in brms Models
mi

Predictors with Missing Values in brms Models
vcov.brmsfit

Covariance and Correlation Matrix of Population-Level Effects
model_weights.brmsfit

Model Weighting Methods
mvbrmsformula

Set up a multivariate model formula for use in brms
rows2labels

Convert Rows to Labels
posterior_average.brmsfit

Posterior samples of parameters averaged across models
waic.brmsfit

Compute the WAIC
prior_samples.brmsfit

Extract prior samples
prior_summary.brmsfit

Extract Priors of a Bayesian Model Fitted with brms
s

Defining smooths in brms formulas
MultiStudentT

The Multivariate Student-t Distribution
AsymLaplace

The Asymmetric Laplace Distribution
Frechet

The Frechet Distribution
ExGaussian

The Exponentially Modified Gaussian Distribution
GenExtremeValue

The Generalized Extreme Value Distribution
StudentT

The Student-t Distribution
MultiNormal

The Multivariate Normal Distribution
Shifted_Lognormal

The Shifted Log Normal Distribution
addition-terms

Additional Response Information
VonMises

The von Mises Distribution
VarCorr.brmsfit

Extract Variance and Correlation Components
InvGaussian

The Inverse Gaussian Distribution
SkewNormal

The Skew-Normal Distribution
Wiener

The Wiener Diffusion Model Distribution
autocor

Extract Autocorrelation Structures
bayes_factor.brmsfit

Bayes Factors from Marginal Likelihoods
as.mcmc.brmsfit

Extract posterior samples for use with the coda package
add_ic

Add information criteria and fit indices to fitted model objects