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.
An R package for conducting Multi-Dimensional Analysis (MDA), a statistical procedure developed by Douglas Biber for analyzing linguistic variation across genres, registers, and text types.
Multi-Dimensional Analysis (MDA) is a specialized application of factor analysis that identifies co-occurring patterns in linguistic features. It is based on the principle that some linguistic variables co-occur (e.g., nouns and adjectives) while others inversely co-occur (e.g., nouns and pronouns).
MDA typically involves:
The linguistic features used in this package are based on Biber’s original research, documented in the corpora and pseudobibeR packages.
mda_loadings()
performs factor analysis and calculates dimension scoresInstall the development version from GitHub:
# Install from GitHub
::install_github("browndw/mda.biber")
devtools
# Load the package
library(mda.biber)
library(mda.biber)
library(dplyr)
# Load and prepare the built-in MICUSP dataset
data(micusp_biber)
# Extract discipline codes and convert to factor
<- micusp_biber %>%
d mutate(doc_id = stringr::str_extract(doc_id, "^[A-Z]+")) %>%
mutate(doc_id = as.factor(doc_id)) %>%
select(where(~ any(. != 0))) # Remove zero-only columns
# Determine optimal number of factors
screeplot_mda(d)
# Perform MDA with 2 factors
<- mda_loadings(d, n_factors = 2)
mda_result
# View dimension scores
head(mda_result)
# Access group means and factor loadings
attributes(mda_result)$group_means
attributes(mda_result)$loadings
The package provides several visualization functions:
# Show category means along a dimension
stickplot_mda(mda_result, n_factor = 1)
# Combine stick plot with factor loadings heatmap
heatmap_mda(mda_result, n_factor = 1)
# Show dimension scores with contributing variables
boxplot_mda(mda_result, n_factor = 1)
The package includes micusp_biber
, a dataset
containing:
Function | Purpose |
---|---|
mda_loadings() |
Core MDA analysis with factor analysis and dimension scoring |
screeplot_mda() |
Generate scree plots to determine optimal number of factors |
stickplot_mda() |
Create stick plots showing category means along dimensions |
heatmap_mda() |
Combine stick plots with factor loading heatmaps |
boxplot_mda() |
Display dimension scores with contributing variable vectors |
If you use this package in your research, please cite:
Brown, D. (2024). mda.biber: Functions for Multi-Dimensional Analysis.
R package version 1.0.1. https://github.com/browndw/mda.biber
This package is licensed under the MIT License.
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.