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expose_split()
bug fixes:
expose_split()
was updated to respect the values of
start_date
and end_date
originally passed to
the expose()
function.expose()
exposure_pol
) after calling expose_split()
match exposures produced by expose_py()
.The expose()
family of functions and
add_transactions()
now allow date columns to be passed as
character vectors in YYYY-MM-DD format. Any character vectors are
converted to dates behind-the-scenes, and any missing values will
results in an error message.
To improve the speed of date calculations, lubridate was replaced with the clock package. Lubridate is no longer included in Imports.
Breaking change - The
pol_interval()
function is no longer exported. As part of
the removal of lubridate, this function’s dur_length
argument only accepts, “year”, “quarter”, “month”, or “week”.
Shiny app layout updates
Small vignette and documentation clean-ups
expose_split()
can convert any
exposed_df
object with calendar period exposures (yearly,
quarterly, monthly, or weekly) into a split_exposed_df
object. Split exposure data frames contain columns for exposures both on
a calendar period and policy year basis.exp_stats()
and exp_shiny()
now require
clarification as to which exposure basis should be used when passed a
split_exposed_df
object.expose_df
objects now contains a
default_status
attribute.autotable()
functions now contain the arguments
decimals_amt
and suffix_amt
. The former allows
one to specify the number of decimals appearing after amount columns.
The latter is used to automatically scale large numbers into by
thousands, millions, billions, or trillions.exp_stats()
is passed a weighting
variable.summary()
method for exposed_df
objects that calls exp_stats()
.expose()
functions was
changed from the first observed status to the most common status.as_exp_df()
and as_trx_df()
were added to convert pre-aggregated experience studies to the
exp_df
and trx_df
formats, respectively.agg_sim_dat
- a new simulated data set of
pre-aggregated experience was added for testing as_exp_df()
and as_trx_df()
.is_exp_df()
and as_trx_df()
were added to
test for the exp_df
and trx_df
classes.A new conf_int
argument was added to
exp_stats()
that creates confidence intervals around
observed termination rates, credibility-weighted termination rates, and
any actual-to-expected ratios.
Similarly, conf_int
was added to
trx_stats()
to create confidence intervals around
utilization rates and any “percentage of” output columns. A
conf_level
argument was also added to this
function.
autoplot.exp_df()
and autoplot.trx_df()
now have a conf_int_bars
argument that plots confidence
intervals (if available) as error bars for the selected
y-variable
autoplot.exp_df()
and autoplot.trx_df()
can now create scatter plots if “points” is passed to the
geoms
argument.
The second y-axis in the autoplot()
methods was
updated to use an area geometry instead of bars for discrete x-axis
variables. In addition, when a log-10 y-scale is used, areas will always
be positive quantities. Previously, it was observed that areas were
drawn as negative values for y-values on the main scale less than
1.
autotable.exp_df()
and
autotable.trx_df()
were updated to format
intervals.
exp_shiny()
updates
Breaking change - The confidence level argument
cred_p
was renamed to conf_level
. This change
was made because the confidence level is no longer strictly used for
credibility calculations. This change impacts the functions
exp_stats()
and exp_shiny()
.
autoplot.exp_df()
and autoplot.trx_df()
now include new options for adding a second y-axis and plotting results
on a log-10 scale. The second y-axis defaults to plotting exposures
using an area geometry.autoplot()
methods. These include
plot_termination_rates()
and
plot_actual_to_expected()
for termination studies and
plot_utilization_rates()
for transaction studiesexp_shiny()
function received a handful of updates
to accommodate new plotting functions and options. A small performance
improvement was added in filtering logic as well. New options include a
title input, credibility options taken from
exp_stats()
,add_predictions()
and step_expose()
.autoplot()
and
autotable()
methods?actxps
)add_predictions()
function that attaches one or
more columns of model predictions to an exposed_df
object
or any other data frame.add_transactions()
and
autotable()
functions for compatibility with the dplyr
1.1.1 and gt 0.9.0.The actxps package now contains support for transaction studies.
add_transactions()
function adds transactions to
exposed_df
objects.trx_stats()
function summarizes transaction results
and returns a trx_df
object.trx_df
) S3 methods were added
for for autoplot()
and autotable()
.exp_shiny()
function was updated to support
transaction studies.withdrawals
) and sample policy values
(account_vals
). These are meant to be paired with
census_dat
.vignette("transactions")
.Other changes
pol_interval()
(a generic version),
pol_yr()
, pol_qtr()
, pol_mth()
,
and pol_wk()
. See vignette("misc")
.as_exposed_df()
function to include stricter input requirements and helpful error
messages.exposed_df
objects to ensure class persistence, especially
on grouped data frames. These include: group_by()
and
ungroup()
, filter()
, arrange()
,
mutate()
, select()
, slice()
,
rename()
, relocate()
,
left_join()
, right_join()
,
inner_join()
, full_join()
,
semi_join()
, and anti_join()
.autotable.exp_df()
was updated to be consistent across like
columns.pol_val
column in census_dat
was
renamed to premium
.expose()
functions now include a new column for period
end dates.
Fixed issues with expose()
dropping records:
Fixed 2 R CMD check problems.
First version submitted to CRAN.
Added exp_shiny()
function.
Added step_expose()
recipe step function.
First developmental version
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.