The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.

rblimp

R interface to Blimp for Bayesian latent variable modeling, missing data analysis, and multiple imputation.

R-CMD-check CRAN_Status_Badge

Overview

rblimp provides a seamless interface to integrate Blimp software into R workflows. Blimp offers general-purpose Bayesian estimation for a wide range of single-level and multilevel structural equation models with two or three levels, with or without missing data.

Key Features

Installation

Step 1: Install rblimp

Install from CRAN:

install.packages("rblimp")

Or install the development version from GitHub:

# install.packages("remotes")
remotes::install_github("blimp-stats/rblimp")

Step 2: Install Blimp Software

rblimp requires the Blimp engine. The simplest path is to let rblimp install it for you:

library(rblimp)
install_blimp()

This downloads the latest Blimp engine into a user-writable directory:

Override the location with the R_BLIMP_HOME environment variable. Remove with uninstall_blimp().

If you’d rather use the system installer, visit https://www.appliedmissingdata.com/blimp and follow the install instructions there.

Step 3 (optional): Configure Blimp manually

If you’ve installed Blimp to a non-standard location:

# Automatic detection (also offered the first time you run a model)
detect_blimp()

# Or set manually
set_blimp("/path/to/blimp")

# Verify
has_blimp()

Privacy

Downloads are recorded for usage statistics. See privacy policy: https://www.blimpstats.com/privacy

Getting Started

View the getting started guide:

?rblimp_getting_started

Explore function documentation:

?rblimp          # Fit Bayesian models
?rblimp_fcs      # Multiple imputation
?rblimp_sim      # Data simulation
help(package = "rblimp")

Quick Example

library(rblimp)

# Generate data with latent factor
mydata <- rblimp_sim(
  c(
    'f ~ normal(0, 1)',
    'x1:x5 ~ normal(f, 1)',
    'y ~ normal(10 + 0.3*f, 1 - .3^2)'
  ),
  n = 500,
  seed = 19723,
  variables = c('y', 'x1:x5')
)

# Fit SEM model
model <- rblimp(
  list(
    structure = 'y ~ f',
    measurement = 'f -> x1:x5'
  ),
  mydata,
  seed = 3927,
  latent = ~ f
)

# View results
summary(model)

# Check convergence
trace_plot(model)

Resources

Citation

If you use rblimp in your research, please cite both the package and Blimp software. Use citation("rblimp") for citation information.

License

GPL-3

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.