legend_set {colorist} | R Documentation |
Make an HCL legend for an unordered set of distributions
Description
This function creates a legend to accompany a map describing an unordered set of distributions.
Usage
legend_set(
palette,
specificity = TRUE,
group_labels = NULL,
label_i = "Maximum\nintensity",
label_s = "Specificity",
axis_i = c("low", "high"),
axis_s = c("low", "high"),
return_df = FALSE
)
Arguments
palette |
data frame containing a color palette generated by palette_set. |
specificity |
logical indicating whether to visualize intensity and layer information for the full range of potential specificity values (i.e., 0-100) or for a single specificity value (i.e., 100). Typically, a single specificity value is appropriate for map_multiples visualizations. |
group_labels |
(axis_l) character vector with labels for each distribution. |
label_i |
character vector with a single element describing the meaning of specificity. |
label_s |
character vector with a single element describing the meaning of intensity values. |
axis_i |
character vector with two elements describing the meaning of low and high intensity values. |
axis_s |
character vector with two elements describing the meaning of low and high specificity values. |
return_df |
logical indicating whether to return the legend as a
|
Value
A ggplot2
plot object of the legend. Alternatively,
return_df = TRUE
will return a data frame containing a data frame
containing the data needed to build the legend. The data frame columns are:
-
specificity
: the degree to which intensity values are unevenly distributed across layers; mapped to chroma. -
layer_id
: integer identifying the layer containing the maximum intensity value; mapped to hue. -
color
: the hexadecimal color associated with the given layer and specificity values. -
intensity
: maximum cell value across layers divided by the maximum value across all layers and cells; mapped to alpha level.
See Also
legend_timecycle for cyclical sequences of distributions and legend_timeline for linear sequences of distributions.
Other legend:
legend_timecycle()
,
legend_timeline()
Examples
# load elephant data
data(elephant_ud)
# generate hcl palette
pal <- palette_set(elephant_ud)
# create legend for palettes
legend_set(pal)