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I have data that plots over time with four different variables. I would like to combine them in one plot using facet_grid, where each variable gets its own sub-plot. The following code resembles my data and the way I'm presenting it:

require(ggplot2)
require(reshape2)

subm <- melt(economics, id='date', c('psavert','uempmed','unemploy'))
mcsm <- melt(data.frame(date=economics$date, q=quarters(economics$date)), id='date')
mcsm$value <- factor(mcsm$value)


ggplot(subm, aes(date, value, col=variable, group=1)) + geom_line() + 
       facet_grid(variable~., scale='free_y') + 
       geom_step(data=mcsm, aes(date, value)) + 
       scale_y_discrete(breaks=levels(mcsm$value))

If I leave out scale_y_discrete, R complains that I'm trying to combine discrete value with continuous scale. If I include scale_y_discreate my continuous series miss their scale.

Is there any neat way of solving this issue ie. getting all scales correct ? I also see that the legend is alphabetically sorted, can I change that so the legend is ordered in the same order as the sub-plots ?

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1 Answer 1

up vote 5 down vote accepted

Problem with your data is that that for data frame subm value is numeric (continuous) but for the mcsm value is factor (discrete). You can't use the same scale for numeric and continuous values and you get y values only for the last facet (discrete). Also it is not possible to use two scale_y...() functions in one plot.

My approach would be to make mcsm value as numeric (saved as value2) and then use them - it will plot quarters as 1,2,3 and 4. To solve the problem with legend, use scale_color_discrete() and provide breaks= in order you need.

mcsm$value2<-as.numeric(mcsm$value)
ggplot(subm, aes(date, value, col=variable, group=1)) + geom_line()+
 facet_grid(variable~., scale='free_y') + geom_step(data=mcsm, aes(date, value2)) +
  scale_color_discrete(breaks=c('psavert','uempmed','unemploy','q'))

enter image description here

UPDATE - solution using grobs

Another approach is to use grobs and library gridExtra to plot your data as separate plots.

First, save plot with all legends and data (code as above) as object p. Then with functions ggplot_build() and ggplot_gtable() save plot as grob object gp. Extract from gp only part that plots legend (saved as object gp.leg) - in this case is list element number 17.

library(gridExtra)
p<-ggplot(subm, aes(date, value, col=variable, group=1)) + geom_line()+
  facet_grid(variable~., scale='free_y') + geom_step(data=mcsm, aes(date, value2)) +
  scale_color_discrete(breaks=c('psavert','uempmed','unemploy','q'))
gp<-ggplot_gtable(ggplot_build(p))
gp.leg<-gp$grobs[[17]]

Make two new plot p1 and p2 - first plots data of subm and second only data of mcsm. Use scale_color_manual() to set colors the same as used for plot p. For the first plot remove x axis title, texts and ticks and with plot.margin= set lower margin to negative number. For the second plot change upper margin to negative number. faced_grid() should be used for both plots to get faceted look.

p1 <- ggplot(subm, aes(date, value, col=variable, group=1)) + geom_line()+
   facet_grid(variable~., scale='free_y')+
  theme(plot.margin = unit(c(0.5,0.5,-0.25,0.5), "lines"),
        axis.text.x=element_blank(),
        axis.title.x=element_blank(),
        axis.ticks.x=element_blank())+
  scale_color_manual(values=c("#F8766D","#00BFC4","#C77CFF"),guide="none")

p2 <- ggplot(data=mcsm, aes(date, value,group=1,col=variable)) + geom_step() +
  facet_grid(variable~., scale='free_y')+
  theme(plot.margin = unit(c(-0.25,0.5,0.5,0.5), "lines"))+ylab("")+
  scale_color_manual(values="#7CAE00",guide="none")

Save both plots p1 and p2 as grob objects and then set for both plots the same widths.

gp1 <- ggplot_gtable(ggplot_build(p1))
gp2 <- ggplot_gtable(ggplot_build(p2))
maxWidth = grid::unit.pmax(gp1$widths[2:3],gp2$widths[2:3])
gp1$widths[2:3] <- as.list(maxWidth)
gp2$widths[2:3] <- as.list(maxWidth)

With functions grid.arrange() and arrangeGrob() arrange both plots and legend in one plot.

grid.arrange(arrangeGrob(arrangeGrob(gp1,gp2,heights=c(3/4,1/4),ncol=1),
       gp.leg,widths=c(7/8,1/8),ncol=2))

enter image description here

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I was optimistically hoping that I would be able to combine the two types as I expect in the future to use the fourth graph with data that is not possible to represent numerically. Thanks for the answer ! –  sgunnars Apr 14 '13 at 13:34
    
@sgunnars Added solution which give you representation of both data types. –  Didzis Elferts Apr 14 '13 at 15:07
    
Nice to see it is possible. In the data I have, there are two things that I have not in place. First I get complaint about the gp.leg. Second the continuous and discrete functions differ slightly on the x-axis. Wasn't the maxWidth = grid::unit.pmax(gp1$widths[2:3],gp2$widths[2:3]) to take care of that ? If so it is not working for me. –  sgunnars Apr 14 '13 at 18:55
    
maxWidth line makes both plots the same width but it doesn't change the axis values - you should try to make scales the same in both plots. For the gp.leg - look on object gp and see in which line "guide-box" is located (it won't be number 17 in every case) –  Didzis Elferts Apr 14 '13 at 19:03
    
I was misunderstanding the first bit and therefor not using it. Thanks for really good answers. –  sgunnars Apr 14 '13 at 19:51

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