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Customising colour palettes in visdat

Customising colour palettes in visdat

library(visdat)

How to provide your own colour palette?

This vignette shoes you how to provide your own colour palette with visdat.

A visdat plot is a ggplot object - so we can use the tools from ggplot to tinker with colours. In this case, that is the scale_fill_manual function.

A “standard” visdat plot might be like so:

vis_dat(typical_data)

You can name the colours yourself like so (after first loading the ggplot package.

library(ggplot2)
vis_dat(typical_data) +
  scale_fill_manual(
    values = c(
      "character" = "red",
      "factor" = "blue",
      "logical" = "green",
      "numeric" = "purple",
      "NA" = "gray"
  ))

This is a pretty, uh, “popping” set of colours? You can also use some hex colours instead.

Say, taken from palette():

palette()
#> [1] "black"   "#DF536B" "#61D04F" "#2297E6" "#28E2E5" "#CD0BBC" "#F5C710"
#> [8] "gray62"
vis_dat(typical_data) +
  scale_fill_manual(
    values = c(
      "character" = "#61D04F",
      "factor" = "#2297E6",
      "logical" = "#28E2E5",
      "numeric" = "#CD0BBC",
      "NA" = "#F5C710"
  ))

How can we get nicer ones?

Well, you can use any of ggplot’s scale_fill_* functions from inside ggplot2

For example:

vis_dat(typical_data) +
  scale_fill_brewer()
#> Warning: Removed 2000 rows containing missing values (`geom_raster()`).

vis_dat(typical_data) +
  scale_fill_viridis_d()
#> Warning: Removed 2000 rows containing missing values (`geom_raster()`).

Happy colour palette exploring! You might want to take a look at some of the following colour palettes from other packages:

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