--- title: "Introduction to measureR" output: rmarkdown::html_vignette: df_print: paged vignette: > %\VignetteIndexEntry{Introduction to measureR} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- # Overview `measureR` provides a unified Shiny-based environment for **educational and psychological measurement**, including: - Content Validity (CV) - Exploratory Factor Analysis (EFA) - Confirmatory Factor Analysis (CFA) - Classical Test Theory (CTT) - Item Response Theory (IRT) 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 ```r install.packages("measureR") library(measureR) ``` --- # Launching the Application ```r 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) - Aiken’s V, CVR (Lawshe), I-CVI, and S-CVI/Ave computation. - Automatic critical value comparison and interpretation badges. - Clear tabular summaries and export-ready results. ## ✔ Exploratory Factor Analysis (EFA) - KMO, Bartlett test, parallel analysis. - Factor extraction with rotation. - Factor scores and loading matrix export. - Clean HTML summaries for clearer interpretation. ## ✔ Confirmatory Factor Analysis (CFA) - Lavaan model editor. - Fit measures, loadings, factor scores. - Fully customized SEM path diagrams. ## ✔ Classical Test Theory (CTT) - Item difficulty and discrimination indices. - Test reliability (α), SEM, and score distribution analysis. - Distractor analysis for multiple-choice items. - Comprehensive item and test-level summary outputs. ## ✔ Item Response Theory (IRT) - Supports dichotomous and polytomous items. - Automatically fits Rasch, 2PL, 3PL (or PCM/GRM/GPCM). - ICC plots, test information, factor scores. - Multi-dimensional visualization with 3D surfaces and heatmaps. --- 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: - Exportable tables (CSV, Excel) - Downloadable graphics (PNG) - Reproducible summaries and model comparisons 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 ```r sessionInfo() ```