The goal of simcdm
is to provide flexible ways to simulate data under
cognitive diagnostic models.
You can install simcdm
from GitHub with:
# install.packages("remotes")
remotes::install_github("tmsalab/simcdm")
To use simcdm
, load the package using:
library("simcdm")
There are four distinct sets of functions within the package:
- Attributes:
attribute_classes()
,attribute_bijection()
,attribute_inv_bijection()
, andsim_subject_attributes()
. - Matrix:
sim_q_matrix()
andsim_eta_matrix()
- Deterministic Input, Noisy And Gate (DINA):
sim_dina_items()
andsim_dina_attributes()
- reduced Reparameterized Unified Model (rRUM):
sim_rrum_items()
Functions that use random numbers to simulate values are named with the
prefix of sim_*()
. This is done to allow for functions to be quickly
identified and used through autocomplete inside of the RStudio
IDE or VS
Code. At a later time, the
attribute_*()
will likely be moved to a different package.
For more details, please see the package vignettes:
James Joseph Balamuta and Steven Andrew Culpepper with contributions from Aaron Hudson.
To ensure future development of the package, please cite simcdm
package if used during the analysis or simulations. Citation information
for the package may be acquired by using in R:
citation("simcdm")
GPL (>= 2)