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brms

The brms package provides an interface to fit Bayesian generalized (non-)linear mixed models using Stan, which is a C++ package for obtaining Bayesian inference using the No-U-turn sampler (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.

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_c) can reduce the seizure counts. Two group-level intercepts are incorporated to account for the variance between patients as well as for the residual variance.

fit <- brm(count ~ log_Age_c + log_Base4_c * Trt_c + (1|patient) + (1|obs), 
           data = epilepsy, family = "poisson")
#> Compiling the C++ model

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

summary(fit, waic = TRUE) 
#>  Family: poisson (log) 
#> Formula: count ~ log_Age_c + log_Base4_c * Trt_c + (1 | patient) + (1 | obs) 
#>    Data: epilepsy (Number of observations: 236) 
#> Samples: 4 chains, each with iter = 2000; warmup = 1000; thin = 1; 
#>          total post-warmup samples = 4000
#>    WAIC: 1146.91
#>  
#> Group-Level Effects: 
#> ~obs (Number of levels: 236) 
#>               Estimate Est.Error l-95% CI u-95% CI Eff.Sample Rhat
#> sd(Intercept)     0.37      0.04     0.29     0.46       1285    1
#> 
#> ~patient (Number of levels: 59) 
#>               Estimate Est.Error l-95% CI u-95% CI Eff.Sample Rhat
#> sd(Intercept)     0.51      0.07     0.38     0.66       1054    1
#> 
#> Population-Level Effects: 
#>                   Estimate Est.Error l-95% CI u-95% CI Eff.Sample Rhat
#> Intercept             1.56      0.08     1.39     1.71       1265    1
#> log_Age_c             0.49      0.37    -0.26     1.21       1213    1
#> log_Base4_c           1.07      0.11     0.86     1.28       1373    1
#> Trt_c                -0.33      0.16    -0.64    -0.02       1239    1
#> log_Base4_c:Trt_c     0.37      0.21    -0.05     0.77       1600    1
#> 
#> 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, as well as the WAIC, which is an information criterion for Bayesian models. 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 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. 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, you can use

plot(fit) 

An even more detailed investigation can be achieved by applying the shinystan package:

launch_shiny(fit) 

There are several methods to compute and visualize model predictions. Suppose that we want to predict responses (i.e. seizure counts) of a person in the treatment group (Trt_c = 0.5) and in the control group (Trt_c = -0.5) with average age and average number of previous seizures. Than we can use

newdata <- data.frame(Trt_c = c(0.5, -0.5), log_Age_c = 0, log_Base4_c = 0)
predict(fit, newdata = newdata, allow_new_levels = TRUE, probs = c(0.05, 0.95))
#>   Estimate Est.Error 5%ile 95%ile
#> 1  4.97575  4.074348     0     13
#> 2  6.88175  5.445014     1     17

We need to set allow_new_levels = TRUE because we want to predict responses of a person that was not present in the data used to fit the model. While the predict method returns predictions of the responses, the fitted method returns predictions of the regression line.

fitted(fit, newdata = newdata, allow_new_levels = TRUE, probs = c(0.05, 0.95))
#>   Estimate Est.Error    5%ile   95%ile
#> 1 4.976105  3.452092 1.480133 11.69071
#> 2 6.915164  4.776523 2.050187 16.15948

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.

A related feature is the computation and visualization of marginal effects, which can help in better understanding the influence of the predictors on the response.

plot(marginal_effects(fit, probs = c(0.05, 0.95)))

For a complete list of methods to apply on brms models see

methods(class = "brmsfit") 
#>  [1] as.data.frame     as.matrix         as.mcmc           coef             
#>  [5] expose_functions  family            fitted            fixef            
#>  [9] formula           hypothesis        launch_shiny      log_lik          
#> [13] log_posterior     logLik            loo               LOO              
#> [17] marginal_effects  marginal_smooths  model.frame       neff_ratio       
#> [21] ngrps             nobs              nuts_params       pairs            
#> [25] parnames          plot              posterior_predict posterior_samples
#> [29] pp_check          predict           predictive_error  print            
#> [33] prior_samples     prior_summary     ranef             residuals        
#> [37] rhat              stancode          standata          stanplot         
#> [41] summary           update            VarCorr           vcov             
#> [45] waic              WAIC             
#> see '?methods' for accessing help and source code

Details on formula syntax, families and link functions, as well as prior distributions can be found on the help page of the brm function:

help(brm) 

More instructions on how to use brms are given in the package's main vignette.

vignette("brms_overview") 

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

library(devtools)
install_github("paul-buerkner/brms")

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.

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 (type help(update.brmsfit) in R for more details).

What is the difference between brms and rstanarm?

rstanarm is an R package similar to brms that 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 more flexibility in model specification than rstanarm. Also, multilevel models are currently fitted a bit more efficiently in brms. For a detailed comparison of brms with other common R packages implementing multilevel models, type vignette("brms_overview") in R.

What is the best way to ask a question or propose a new feature?

Questions can be asked on codewake. To propose a new feature or report a bug, please open an issue on github. Of course, you can always write me an email (paul.buerkner@gmail.com).

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Version

Install

install.packages('brms')

Monthly Downloads

27,378

Version

1.3.1

License

GPL (>= 3)

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Maintainer

PaulChristian Buerkner

Last Published

December 22nd, 2016

Functions in brms (1.3.1)

as.mcmc.brmsfit

Extract posterior samples for use with the coda package
brmsfit-class

Class brmsfit of models fitted with the brms package
brmsformula

Set up a model formula for use in the brms package
coef.brmsfit

Extract model coefficients
cor_arr

ARR(r) correlation structure
cor_arma

ARMA(p,q) correlation structure
brms-package

Bayesian Regression Models using Stan
cor_ar

AR(p) correlation structure
brmsfamily

Special Family Functions for brms Models
brm

Fit Bayesian Generalized (Non-)Linear Multilevel Models
cor_brms

Correlation structure classes for the brms package
expose_functions.brmsfit

Expose user-defined Stan functions
cor_ma

MA(q) correlation structure
fixef.brmsfit

Extract Population-Level Estimates
fitted.brmsfit

Extract Model Fitted Values of brmsfit Objects
log_posterior.brmsfit

Extract Diagnostic Quantities of brms Models
get_prior

Overview on Priors for brms Models
epilepsy

Epileptic seizure counts
cov_fixed

Fixed user-defined covariance matrices
cs

Category Specific Predictors in brms Models
inhaler

Clarity of inhaler instructions
kidney

Infections in kidney patients
summary.brmsfit

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

MCMC Plots Implemented in bayesplot
print.brmsfit

Print a summary for a fitted model represented by a brmsfit object
predict.brmsfit

Model Predictions of brmsfit Objects
mo

Monotonic Predictors in brms Models
mm

Set up multi-membership grouping terms in brms
gr

Set up basic grouping terms in brms
hypothesis.brmsfit

Non-linear hypothesis testing
posterior_samples.brmsfit

Extract posterior samples
pp_check.brmsfit

Posterior Predictive Checks for brmsfit Objects
update.brmsfit

Update brms models
set_prior

Prior Definitions for brms Models
residuals.brmsfit

Extract Model Residuals from brmsfit Objects
LOO.brmsfit

Compute the LOO information criterion
VarCorr.brmsfit

Extract variance and correlation components
make_stancode

Stan Code for brms Models
ngrps.brmsfit

Number of levels
pairs.brmsfit

Create a matrix of output plots from a brmsfit object
stancode

Extract Stan Model Code
log_lik.brmsfit

Compute the Pointwise Log-Likelihood
standata

Extract Data passed to Stan
parnames

Extract Parameter Names
launch_shiny

Interface to shinystan
prior_summary.brmsfit

Extract Priors of a Bayesian Model Fitted with brms
plot.brmsfit

Trace and Density Plots for MCMC Samples
ranef.brmsfit

Extract Group-Level Estimates
make_standata

Data for brms Models
marginal_effects.brmsfit

Display marginal effects of predictors
marginal_smooths.brmsfit

Display Smooth Terms
me

Predictors with Measurement Error in brms Models
prior_samples.brmsfit

Extract prior samples
vcov.brmsfit

Covariance and Correlation Matrix of Population-Level Effects
print.brmsprior

Print method for brmsprior objects
WAIC.brmsfit

Compute the WAIC