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This is the third post in our series Mastering R Plot, in this one we will cover the outer margins. To know more about plot customization read my first and second post.
Let’s directly dive into some code:
#a plot has inner and outer margins #by default there is no outer margins par()$oma [1] 0 0 0 0 #but we can add some op<-par(no.readonly=TRUE) par(oma=c(2,2,2,2)) plot(1,1,type="n",xlab="",ylab="",xaxt="n",yaxt="n") for(side in 1:4){ inner<-round(par()$mar[side],0)-1 for(line in 0:inner){ mtext(text=paste0("Inner line ",line),side=side,line=line) } outer<-round(par()$oma[side],0)-1 for(line in 0:inner){ mtext(text=paste0("Outer line ",line),side=side,line=line,outer=TRUE) } }
From this plot we see that we can control outer margins just like we controlled inner margins using the par
function. To write text in the outer margins with the mtext
function we need to set outer=TRUE
in the function call.
Outer margins can be handy in various situations:
#Outer margins are useful in various context #when axis label is long and one does not want to shrink plot area par(op) #example par(cex.lab=1.7) plot(1,1,ylab="A very very long axis titlenthat need special care",xlab="",type="n") #one option would be to increase inner margin size par(mar=c(5,7,4,2)) plot(1,1,ylab="A very very long axis titlenthat need special care",xlab="",type="n") #sometime this is not desirable so one may plot the axis text outside of the plotting area par(op) par(oma=c(0,4,0,0)) plot(1,1,ylab="",xlab="",type="n") mtext(text="A very very long axis titlenthat need special care",side=2,line=0,outer=TRUE,cex=1.7)
With outer margins we can write very long or very big axis labels or titles without having to “sacrifice” the size of the plotting region.
This comes especially handy for multi-panel plots:
#this is particularly useful when having a plot with multiple panels and similar axis labels par(op) par(oma=c(3,3,0,0),mar=c(3,3,2,2),mfrow=c(2,2)) plot(1,1,ylab="",xlab="",type="n") plot(1,1,ylab="",xlab="",type="n") plot(1,1,ylab="",xlab="",type="n") plot(1,1,ylab="",xlab="",type="n") mtext(text="A common x-axis label",side=1,line=0,outer=TRUE) mtext(text="A common y-axis label",side=2,line=0,outer=TRUE)
And we can also add a common legend:
set.seed(20160228) #outer margins can also be used for plotting legend in them x<-runif(10) y<-runif(10) cols<-rep(c("red","green","orange","yellow","black"),each=2) par(op) par(oma=c(2,2,0,4),mar=c(3,3,2,0),mfrow=c(2,2),pch=16) for(i in 1:4){ plot(x,y,col=cols,ylab="",xlab="") } mtext(text="A common x-axis label",side=1,line=0,outer=TRUE) mtext(text="A common y-axis label",side=2,line=0,outer=TRUE) legend(x=1,y=1.7,legend=LETTERS[1:5],col=unique(cols),pch=16,bty="n",xpd=NA)
An important point to note here is that the xpd
argument in the legend
function which control if all plot elements (ie points, lines, legend, text …) are clipped to the plotting region if it is set to FALSE (the default value). If it is set to TRUE all plot elements are clipped to the figure region (plot + inner margins) and if it is set to NA you can basically add plot elements everywhere in the device region (plot + inner margins + outer margins). In the example above we set it to NA. Note that the xpd
argument can also be set within the par
function, it is then applied to all subsequent plots.
With all these tools in our hands we are now able to make our plots look just how we want them to. It is a matter of taste whether one prefer to use ggplot
or plot
to produce his/her final plots (I actually use them both) but I find that once one knows a bit about these funny arguments like cex, pch or oma it quickly gives what you want.
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