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Introduction to measureR

Overview

measureR provides a unified Shiny-based environment for educational and psychological measurement, including:

The package is designed for users who prefer a graphical workflow without writing code, while still leveraging robust statistical methodologies implemented in well-established R packages.


Installation

install.packages("measureR")
library(measureR)

Launching the Application

library(measureR)
run_measureR()

This will open the full Shiny interface, where you can upload data, choose an analysis module, and generate results.


Modules Included

✔ Content Validity (CV)

✔ Exploratory Factor Analysis (EFA)

✔ Confirmatory Factor Analysis (CFA)

✔ Classical Test Theory (CTT)

✔ Item Response Theory (IRT)

Once inside the GUI:

  1. Choose a module (e.g., IRT)
  2. Upload your dataset or select a built-in dataset
  3. Choose variables and model settings
  4. Fit the models and explore the outputs

Reproducibility and Reporting

measureR provides:

This ensures results produced through the GUI can be published or documented with confidence.


Citation

Please cite this package as:

Djidu, H. (2026). measureR: Tools for educational and psychological measurement. https://github.com/hdmeasure/measureR. R Packages. —

Session Info

sessionInfo()

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.
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