6
library(tidyverse)
ggplot(mpg, aes(displ, cty)) + 
  geom_point() + 
  facet_grid(rows = vars(drv), scales = "free")

The ggplot code above consists of three panels 4, f, and r. I'd like the y-axis limits to be the following for each panel:

Panel y-min y-max breaks
----- ----- ----- ------
4     5     25    5
f     0     40    10
r     10    20    2

How do I modify my code to accomplish this? Not sure if scale_y_continuous makes more sense or coord_cartesian, or some combination of the two.

  • 2
    I think the general approach is to make separate plots and then stitch them together rather than using facets. Some ideas on how to do this shown here and here – aosmith Aug 7 '18 at 21:23
  • I think that neither of your suggestions (scale_y_continuous or coord_cartesian) are applicable facet-by-facet. If these are extensions of the data scale, I've also done this by adding fake data to the data set (and doing whatever's necessary to make sure it is considered in defining scales, but not plotted). It may also be possible to use the breaks() function to hack this, by detecting which subplot is currently being considered ... – Ben Bolker Aug 7 '18 at 21:24
  • 1
    @BenBolker OP is using mpg which is a built-in dataset to ggplot2 – Calum You Aug 7 '18 at 22:03
  • d'oh! .......... – Ben Bolker Aug 7 '18 at 22:32
  • This problem may be resolved by set scale_y_continuous(breaks=my_breaks,expand=expand_scale(mult= c(0,.1))), through which the my_break function set the breaks and expand_scale set the limits. – pengchy Aug 15 '19 at 4:06
7

preliminaries

Define original plot and desired parameters for the y-axes of each facet:

library(ggplot2)
g0 <- ggplot(mpg, aes(displ, cty)) + 
    geom_point() + 
    facet_grid(rows = vars(drv), scales = "free")

facet_bounds <- read.table(header=TRUE,
text=                           
"drv ymin ymax breaks
4     5     25    5
f     0     40    10
r     10    20    2",
stringsAsFactors=FALSE)

version 1: put in fake data points

This doesn't respect the breaks specification, but it gets the bounds right:

Define a new data frame that includes the min/max values for each drv:

ff <- with(facet_bounds,
           data.frame(cty=c(ymin,ymax),
                      drv=c(drv,drv)))

Add these to the plots (they won't be plotted since x is NA, but they're still used in defining the scales)

g0 + geom_point(data=ff,x=NA)

This is similar to what expand_limits() does, except that that function applies "for all panels or all plots".

version 2: detect which panel you're in

This is ugly and depends on each group having a unique range.

library(dplyr)
## compute limits for each group
lims <- (mpg
    %>% group_by(drv)
    %>% summarise(ymin=min(cty),ymax=max(cty))
)

Breaks function: figures out which group corresponds to the set of limits it's been given ...

bfun <- function(limits) {
    grp <- which(lims$ymin==limits[1] & lims$ymax==limits[2])
    bb <- facet_bounds[grp,]
    pp <- pretty(c(bb$ymin,bb$ymax),n=bb$breaks)
    return(pp)
}
g0 + scale_y_continuous(breaks=bfun, expand=expand_scale(0,0))

The other ugliness here is that we have to set expand_scale(0,0) to make the limits exactly equal to the group limits, which might not be the way you want the plot ...

It would be nice if the breaks() function could somehow also be passed some information about which panel is currently being computed ...

| improve this answer | |
  • A "cleaner" approach to plotting invisible points as a means to control the scales may be to use geom_blank(). – crsh Jan 23 at 14:05
10

This is a long-standing feature request (see, e.g., 2009, 2011, 2016) which is tackled by a separate package facetscales.

devtools::install_github("zeehio/facetscales")
library(g)
library(facetscales)
scales_y <- list(
  `4` = scale_y_continuous(limits = c(5, 25), breaks = seq(5, 25, 5)),
  `f` = scale_y_continuous(limits = c(0, 40), breaks = seq(0, 40, 10)),
  `r` = scale_y_continuous(limits = c(10, 20), breaks = seq(10, 20, 2))
)
ggplot(mpg, aes(displ, cty)) + 
  geom_point() + 
  facet_grid_sc(rows = vars(drv), scales = list(y = scales_y))

enter image description here

If the parameters for each facet are stored in a dataframe facet_params, we can compute on the language to create scale_y:

library(tidyverse)
facet_params <- read_table("drv y_min y_max breaks
4     5     25    5
f     0     40    10
r     10    20    2")

scales_y <- facet_params %>% 
  str_glue_data(
    "`{drv}` = scale_y_continuous(limits = c({y_min}, {y_max}), ", 
                "breaks = seq({y_min}, {y_max}, {breaks}))") %>%
  str_flatten(", ") %>% 
  str_c("list(", ., ")") %>% 
  parse(text = .) %>% 
  eval()
| improve this answer | |
4

I wanted to use a log scale with facetscales and struggled.

It turned out I have to specify the log10 at two positions:

scales_x <- list(
  "B" = scale_x_log10(limits=c(0.1, 10), breaks=c(0.1, 1, 10)),
  "C" = scale_x_log10(limits=c(0.008, 1), breaks=c(0.01, 0.1, 1)),
  "E" = scale_x_log10(limits=c(0.01, 1), breaks=c(0.01, 0.1, 1)),
  "R" = scale_x_log10(limits=c(0.01, 1), breaks=c(0.01, 0.1, 1))
)

and in the plot

ggplot(...) + facet_grid_sc(...) +  scale_x_log10()
| improve this answer | |

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