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calmr 0.6.1
- Added
outputs
argument to run_experiment()
, parse()
, and aggregate()
, allowing the user to parse/aggregate only some model outputs.
- Documentation corrections for CRAN resubmission.
calmr 0.6.0
- Added dependency on
data.table
resulting in great speedups for large experiments.
- Replaced dependency on
cowplot
with dependency on patchwork
.
- Removed dependencies on
tibble
, dplyr
, tidyr
, and other packages from the tidyverse
.
- Removed
shiny
app from the package.
- The previous app is now distributed separately via the
calmr.app
package available on GitHub.
- Test coverage has reached 100%.
- The package is now ready for CRAN submission.
calmr 0.5.1
- Added parallelization and progress bars via
future
, future.apply
, and progressr
.
- Function
calmr_verbosity
can set the verbosity of the package.
calmr 0.5.0
- Implementation of ANCCR (Jeong et al., 2022), the first time-based model included in
calmr
.
- Added parameter distinction between trial-wise and period-wise parameters.
- Added internal augmentation of design/arguments depending on the model.
- All trial-based models do not use pre/post distinctions anymore. Using the “>” special character does not affect these models anymore.
- The “>” special character is used to specify periods within a trial. For example, “A>B>C” implies A is followed by B which is followed by C. See the
using_time_models
vignette for additional information.
- Named stimuli now support numbers trailing characters (e.g., “(US1)” is valid now.)
calmr 0.4.0
- Major refactoring of classes and models. This should help development moving forward.
- Added several methods for access to CalmrExperiment contents, including
c
(to bind experiments) results
, plot
, graph
, design
, and parameters
.
- Created CalmrDesign and CalmrResult classes.
- Rewrote parsers to be less verbose and to rely less on the
tidyverse
suite and piping.
- Substantially reduced the complexity of
make_experiment
function (previous make_experiment
).
- Introduced distinction between stimulus-specific and global parameters.
- Parameters are now lists instead of data.frames.
- Modified UI for calmr app to include a sidebar.
- Simplified the app by removing some of the options.
- Nearly duplicated the number of tests.
calmr 0.3.0
- Added first version of the SOCR model (SM2007) as well as two vignettes explaining the math behind the implementation and some quick simulations.
- Documentation progress.
calmr 0.2.0
- Added multiple models to package and app (RW1972, PKH1982, MAC1975).
- Implementation of basic S4 classes for model, experiment, fit, and RSA comparison objects, as well as their methods.
- Added genetic algorithms (via
GA
) for parameter estimation.
- Added basic tools to perform representational similarity analysis.
- Documentation progress.
calmr 0.1.0
heidi
is now calmr
. The package now aims to maintain several associative learning models and implement tools for their use.
- Major overhaul of the training function (train_pav_model). All relevant calculations are now done as a function of all functional stimuli instead of just the US.
- Support for the specification of expectation/correction steps within the trial via “>”. For example, the trial “A>(US)” will use only A to generate the expectation, but will learn about both stimuli during the correction step.
- The previous plotting function for R-values has been revamped to allow both simple and complex versions. The complex version facets r-values on a predictor basis, and uses colour lines for each target.
- Bugfix related to stimulus saliencies.
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.