Releases: wjakethompson/measr
measr 1.0.0
New documentation
-
A new article on model evaluation has been added to the project website (https://measr.info).
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The model estimation article has been updated to use the same (simulated) data set as the model evaluation article.
-
More detailed installation instructions have been added to the getting started vignette (#23).
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A case study demonstrating a full DCM-based analysis using data from the ECPE (
?ecpe_data
) has been added to the project website.
Minor improvements and fixes
-
Fixed bug in the LCDM specification of constraints for level-3 and above interaction terms.
-
Functions for evaluating estimated models (e.g.,
fit_ppmc()
,reliability()
) no longer recalculate indices if they have previously been saved to the model object. This behavior can be overwritten withforce = TRUE
. -
Updated Stan syntax to be compatible with the new array syntax (@andrjohns, #36)
-
get_parameters()
now preserves item identifiers by default. Items can be renamed with numbers (e.g., 1, 2, 3, ...) by settingrename_item = TRUE
. -
measr now reexports functions from posterior for conducting mathematical operations on
posterior::rvar()
objects. -
Respondent estimates are now returned as
posterior::rvar()
objects when not summarized.
JOSS Publication
This is the version of measr that was reviewed for the Journal of Open Source Software.
measr 0.3.1
- Added a
NEWS.md
file to track changes to the package.
New features
-
Support for additional model specifications has been added (#10):
- The compensatory reparameterized unified model (C-RUM) can now be estimated by defining
type = "crum"
in themeasr_dcm()
function. - Users can now drop higher order interactions from the loglinear cognitive diagnostic model (LCDM). A new argument for
measr_dcm()
,max_interaction
, defines the highest order interactions to estimate. For example,max_interaction = 2
will estimate only intercepts, main effects, and two-way interactions. - A new argument to
measr_dcm()
,attribute_structure
allows users to specified either "unconstrained" relationships between attributes or "independent" attributes.
- The compensatory reparameterized unified model (C-RUM) can now be estimated by defining
-
Updated prior specifications:
- Users can now specify a prior distribution for the structural parameters that govern the base rates of class membership (#2).
- Safeguards were added to warn users when a specified prior is not defined for the chosen DCM sub-type. For example, an error is generated if a prior is defined for a slipping parameter, but the LCDM was chosen as the type of model to be estimated (#1).
Minor improvements and fixes
-
Fixed bug with
backend = "rstan"
where warmup iterations could be more than the total iterations requested by the user if warmup iterations were not also specified (#6). -
Additional specifications were added to
measr_extract()
for extracting results from an estimated model.
measr 0.2.1
Initial release