Minor changes to theme = 1
in
pirateplot()
. Changed default value of
cap.beans
to TRUE
Added color mixing arguments mix.col
and
mix.p
to piratepal()
. These allow you to mix
the default palettes with a specified color (e.g.;
"white"
)
Added the option to specify data in pirateplot()
as
a list of numeric vectors, or as a numeric dataframe or matrix without
specifying a formula. Each column / element will be taken as a new
group.
New palettes in piratepal()
:
decision
.
Fixed bug in sortx
in pirateplot()
.
Sorting data by functions (e.g. sortx = "mean"
) should now
work.
Added gl
argument to pirateplot()
to
specify locations of gridlines (e.g.;
gl = seq(0, 10, 1)
)
Added cex.names
argument to control size of bean
names (currently this was controlled by cex.lab
, which now
controls the size of the axis names.)
Some minor changes to default plotting parameters that I think make the default plots look a bit nicer.
Added cap.beans
argument to
pirateplot()
. When cap.beans = TRUE
, beans
will be cut at the maximum and minimum values of the data.
Added cap.beans
argument to
pirateplot()
. When cap.beans = TRUE
, beans
will be cut at the maximum and minimum values of the data.
Added two new inf.method
values: sd
for
standard deviation, and se
for standard error
Minor updates to themes. Added theme = 3
You can now assign a pirateplot to a variable to return summary statistics.
Added a NEWS.md
file to track changes to the
package.
Re-structured code generating colors and opacities in
pirateplot()
to make future updates easier.
Added quant
, quant.length
and
quant.width
arguments that add horizontal lines for
specified quantiles to each bean (thanks @pat-s)
Added several new arguments (e.g.; bean.fill.col
for
customising pirateplots
Improved theme support (now under theme
rather than
theme.o
)
pirateplot()
can now handle up to 3 IVs!pirateplot(age ~ sex + headband + favorite.pirate, data = pirates)
.Minor and Bug-fixes
inf.p
parameter in pirateplot()
was
prevously not being passed to the Bayesian HDIs, rendering all inference
bands to be the default of 95% (thanks to Roman Pahl for catching this).
This has now been fixed.hdi.band
argument to pirateplot()
.
Setting hdi.band = "tight"
will constrain inference bands
to bean densities.gl.col
.