prcr
is an R
package for person-centered
analysis. Person-centered analyses focus on clusters, or profiles, of
observations, and their change over time or differences across factors.
See Bergman
and El-Khouri (1999) for a description of the analytic approach. See
Corpus
and Wormington (2014) for an example of person-centered analysis in
psychology and education.
You can install the development version of prcr
(v.
0.2.0
) from Github with:
# install.packages("devtools")
::install_github("jrosen48/prcr") devtools
This version takes a “data-first” approach different from the
object-oriented approach used in the version on CRAN. Because of this,
Please note that there presently exists a significant gap in the
user interface between the CRAN version available through
install.packages("prcr")
and the in-development version
available through GitHub. This should be addressed shortly in
the next CRAN update.
You can install prcr
from CRAN (v. 0.1.5
)
with:
install.packages("prcr")
This is a basic example using the built-in dataset
pisaUSA15
:
library(prcr)
<- pisaUSA15
df <- create_profiles_cluster(df, broad_interest, enjoyment, instrumental_mot, self_efficacy, n_profiles = 3)
m3 #> Prepared data: Removed 354 incomplete cases
#> Hierarchical clustering carried out on: 5358 cases
#> K-means algorithm converged: 5 iterations
#> Clustered data: Using a 3 cluster solution
#> Calculated statistics: R-squared = 0.424
plot_profiles(m3, to_center = T)
#> Warning: attributes are not identical across measure variables;
#> they will be dropped
Other functions include those for carrying out comparing r-squared values and perfomring cross-validation. These are documented in both the manual and vignette for the CRAN release and their versions in the in-development version will be documented prior to the CRAN release.
See examples of use of prcr
in the vignettes.
Please note that this project is released with a Contributor Code of Conduct available here
This package is being developed along with its sister project,
tidyLPA
, which makes it easy to carry out Latent Profile
Analysis by providing an interface to the MCLUST package. More
information about tidyLPA
is available here.