calmr 0.8.1
- Minor patch for ggplot2 v4.0.0 compatibility.
calmr 0.8.0
- Major changes
- Added CalmrModelclass.
- This class is contains information about the model, including, among
other things, its name, (current) parameters, default_parameters, and
several lists pointing to internal functions used to name, parse, and
plot results. See help("CalmrModel-class")for more
information on the slots.
- Model logic is now encapsulated within the run()method
(seehelp("run,CalmrModel-method")). This method modifies
theCalmrModelto populate the.last_raw_resultsslot with lists of raw results, and
overwrite internals such as model parameters.
- The class has its own methods (including plot()andgraph()). See?CalmrModel-methodsfor more
information.
 
- Users can now define custom models by inheriting from
CalmrModelclass.
 
- Minor changes
- Removed CalmrResultsclass. Raw and parsed results are
now stored in theCalmrModelclass’.last_raw_resultsand.last_parsed_resultsslots, respectively. Aggregated results are now stored in theCalmrExperimentclass’resultsslot.
- Added CalmrExperimentslotmodelsto store
theCalmrModelinstances used in the experiment.
- Added functionality to resume training a model across different
experiments. If necessary, the objects representing the internal states
of a model (e.g., a matrix of associations) will be expanded to
accommodate new stimuli. This feature should be treated as experimental,
and casual users should instead specify different phases in a single
experiment.
- Model definition now includes global flag for each parameter
(is_global).
 
- Minor bug fixes:
- Fixed bug in Witnauer’s comparator procedure form
SM2007for higher order comparisons.
 
calmr 0.7.1
- Fixed bug in usage of beta parameters in the RW1972 model. Added
tests for all model parameters. Additionally, disabled functional
stimuli for RW1972.
- Fixed bug in calculation of alpha deltas for MAC1975. Added tests
for all model parameters and some expected behaviours with regards to
associability.
calmr 0.7.0
- Corrected some issues in directional models.
- Created a vignette to expose the behaviour of directional
models.
- Removed randomization column requirement from designs. Randomization
of phases is now specified using the “!” character anywhere in the phase
string. Using the old format throws a deprecation warning.
- Added support for seed experiment generation in
make_experiment().
- Added set_calmr_palette()function to control the
colour/fill scales used to plot results (#1).
- Added filter()method forCalmrExperimentclass that allows filtering of aggregated data (#1).
- Fixed bug in make_experiment()that was triggered by
empty phases and no miniblocks.
- Changed get_timings()to require a specific model
name.
- Added vignette for TD model.
calmr 0.6.2
- Aggregation of ANCCR data now ignores time; time entries are
averaged.
- Added the Temporal Difference model under the name “TD”. The model
is in an experimental state.
- Experiments for time-based models now require a separate list to
construct time-based experiences. See get_timings().
- Added experiences<-,timings,timings<-methods forCalmrExperimentclass.
- Revamped plotting functions and parsing functions.
- Revamped output names for all models to make them more
intelligible.
- Fixed a bug related to the aggregation of pools in HDI2020 and
HD2022.
- Consolidated some man pages.
calmr 0.6.1
- Added outputsargument torun_experiment(),parse(), andaggregate(), allowing the user to parse/aggregate only some
model outputs.
- Documentation corrections for CRAN resubmission.
calmr 0.6.0
- Added dependency on data.tableresulting in great
speedups for large experiments.
- Replaced dependency on cowplotwith dependency onpatchwork.
- Removed dependencies on tibble,dplyr,tidyr, and other packages from thetidyverse.
- Removed shinyapp from the package.
- The previous app is now distributed separately via the
calmr.apppackage 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, andprogressr.
- Function calmr_verbositycan 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 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_modelsvignette 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, andparameters.
- Created CalmrDesignandCalmrResultsclasses.
- Rewrote parsers to be less verbose and to rely less on the
tidyversesuite and piping.
- Substantially reduced the complexity of make_experimentfunction (previousmake_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
- heidiis 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.