fit_dd()
:
"mazur"
/"hyperbolic"
or
"exponential"
) and methods ("pooled"
,
"mean"
, or "two stage"
)."fit_dd"
containing the
fitted models, input data, and method details.plot_dd()
:
results_dd()
:
"fit_dd"
object.check_unsystematic()
:
calc_aucs()
:
calc_conf_int()
function, ensuring accurate estimation
based on model degrees of freedom.calc_r2()
function, providing reliable fit metrics for all
models.check_unsystematic
), model
fitting (fit_dd
), to visualization (plot_dd
),
to result extraction (results_dd
).calc_pd()
and
score_pd()
. ep50
changed to
etheta50
and corrected calculation of
ep50
.calc_pd()
(and
score_pd()
, timing_pd()
, and
ans_pd
).score_dd()
that would
unintentionally drop all rows if both conditions were
FALSE
.Rename example data from five.fivetrial
to
five.fivetrial_dd
for delay discounting.
Add example data five.fivetrial_pd
for probability
discounting.
score_mcq27()
properly supports arguments:
impute_method
, random
,
return_data
, and verbose
. See documentation
and the README
for explanations.
generate_data_mcq()
can generate fake MCQ data,
including seed
and prop_na
arguments for
reproducibility and specifying proportion of NA
s.
long_to_wide*
and wide_to_long*
are
helper functions to reshape data from/to different formats.
NA
s exist in the
data, score_mcq27()
returns NA
s for the
scoring instead of 1.Initial release with basic scoring of 27-item Monetary Choice Questionnaire and 5.5 trial delay discounting task from the Qualtrics template.
Added a NEWS.md
file to track changes to the
package.