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I'd like to include the relevant statistics from a geom_quantile() fitted line in a similar way to how I would for a geom_smooth(method="lm") fitted linear regression (where I've previously used ggpmisc which is awesome). For example, this code:

# quantile regression example with ggpmisc equation
# basic quantile code from here:
# https://ggplot2.tidyverse.org/reference/geom_quantile.html

library(tidyverse)
library(ggpmisc)
# see ggpmisc vignette for stat_poly_eq() code below:
# https://cran.r-project.org/web/packages/ggpmisc/vignettes/user-guide.html#stat_poly_eq

my_formula <- y ~ x
#my_formula <- y ~ poly(x, 3, raw = TRUE)

# linear ols regression with equation labelled
m <- ggplot(mpg, aes(displ, 1 / hwy)) +
  geom_point()

m + 
  geom_smooth(method = "lm", formula = my_formula) +
  stat_poly_eq(aes(label =  paste(stat(eq.label), "*\" with \"*", 
                                  stat(rr.label), "*\", \"*", 
                                  stat(f.value.label), "*\", and \"*",
                                  stat(p.value.label), "*\".\"",
                                  sep = "")),
               formula = my_formula, parse = TRUE, size = 3)  

generates this: ggplot with linear ols equation

For a quantile regression, you can swap out geom_smooth() for geom_quantile() and get a lovely quantile regression line plotted (in this case the median):

# quantile regression - no equation labelling
m + 
  geom_quantile(quantiles = 0.5)
  

geom_quantile plot

How would you get the summary statistics out to a label, or recreate them on the go? (i.e. other than doing the regression prior to the call to ggplot and then passing it in to then annotate (e.g. similar to what was done here or here for a linear regression?

  • 1
    What are the specific "relevant statistics" that you would like to print on the plot? Of course its always best to fit your own model to get important fit statistics rather replying on a plotting function. Those other functions are basically just wrappers that do that for you (you end up fitting the model multiple times which is a bit wasteful). You could write your own geom to do this if you really want to hide the work but that's basically what needs to happen. – MrFlick Jan 13 at 3:58
  • Fair call. I think there may be a solution using stat_fit_glance from ggpmisc, though I just need to get my head around how it might work with multiple quantiles. cran.r-project.org/web/packages/ggpmisc/vignettes/… – Mark Neal Jan 13 at 4:00
  • I was hoping stat_fit_glance() and stat_fit_tidy() would allow me to replace the 'lm' method with 'rq' and I would be done. No such luck. For an alternative approach, it is easy to make the tibbles of summary statistics for quantreg::rq()outside the ggplot call, though glance() requires the use of purrr::map when multiple quantiles are desired. – Mark Neal Jan 13 at 4:51
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    @MarkNeal I have raised an issue to remind myself of having a look at why stat_fit_glance() does not work if glance() is implemented. (And thanks for letting me know that you find 'ggpmisc' useful!) – Pedro Aphalo Jan 15 at 9:46

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