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I am mapping two factors to the color argument in ggplot and want to remove one from the legend.

I have these data.

Data <- structure(list(StudyArea = c("AAA", "BBB", "CCC", "AAA", "BBB", 
"CCC", "AAA", "BBB", "CCC"), Obs = c(190L, 481L, 219L, 190L, 
481L, 219L, 190L, 481L, 219L), InSituPred = c(180, 462, 199, 
180, 462, 199, 180, 462, 199), InSituSE = c(9.57382456553708, 
16.5306359391421, 9.51070020039693, 9.57382456553708, 16.5306359391421, 
9.51070020039693, 9.57382456553708, 16.5306359391421, 9.51070020039693
), variable = c("ExSituAAA", "ExSituAAA", "ExSituAAA", "ExSituBBB", 
"ExSituBBB", "ExSituBBB", "ExSituCCC", "ExSituCCC", "ExSituCCC"
), value = c(NA, 500, 172, 156, NA, 161, 200, 562, NA), SE = c(20.8552264204181, 
16.1382421185167, 21.43693858142, 20.8552264204181, 16.1382421185167, 
21.43693858142, 20.8552264204181, 16.1382421185167, 21.43693858142
)), .Names = c("StudyArea", "Obs", "InSituPred", "InSituSE", 
"variable", "value", "SE"), row.names = c(NA, -9L), class = "data.frame")

And using the code below, can make the plot below.

ggplot(Data)+
  geom_point(aes(x=StudyArea, y=value, color=variable),size=3, shape=1)+
  geom_errorbar(aes(x=StudyArea, ymin=value-SE, ymax=value+SE, color=variable),lty = 2, cex=0.75)+
  geom_point(aes(x=StudyArea, y=InSituPred, color=StudyArea),size=3, shape=1)+
  geom_errorbar(aes(x=StudyArea, ymin=InSituPred-InSituSE, ymax=InSituPred+InSituSE, color=StudyArea),lty=1,cex=0.75)+
  geom_point(aes(x=StudyArea, y=Obs, color=StudyArea),shape="*",size=12)

Fig

I want to remove the StudyArea colors from the legend (AAA:CCC) so that it only contains ExSituAAA, ExSituBBB, ExSituCCC.

ADDITION Using the code below (with the helpful comments from @shadow) I can create the figure below.

p <- ggplot(Data, aes(x=StudyArea))+
  geom_point(aes(y=value, color=variable),size=3, shape=1)+
  geom_errorbar(aes(ymin=value-SE, ymax=value+SE, color=variable),lty = 2, cex=0.75)+
  geom_point(aes(y=InSituPred, color=StudyArea),size=3, shape=1)+
  geom_errorbar(aes(ymin=InSituPred-InSituSE, ymax=InSituPred+InSituSE, color=StudyArea),lty=1,cex=0.75)+
  geom_point(aes(y=Obs, color=StudyArea),shape="*",size=12) +
  scale_color_discrete(breaks=c("ExSituAAA", "ExSituBBB", "ExSituCCC"))

p +  scale_color_manual(name="Study Area \nPrediction", 
                        values=c("red", "blue", "darkgreen","red","blue","darkgreen"), 
                        breaks=c("ExSituAAA", "ExSituBBB", "ExSituCCC"))

FigureII

I want to add a linetype to the legend specifying a solid line = InSitu and a dotted line = ExSitu.

I specified the linetype manually (and not through a factor in aes) using lty because I needed to also specify color . Looking at the head below, the Data$SE is lty = 2, and the Data$InSituSE is lty 1.

>

 head(Data)
  StudyArea Obs InSituPred  InSituSE  variable value       SE
1       AAA 190        180  9.573825 ExSituAAA    NA 20.85523
2       BBB 481        462 16.530636 ExSituAAA   500 16.13824
3       CCC 219        199  9.510700 ExSituAAA   172 21.43694
4       AAA 190        180  9.573825 ExSituBBB   156 20.85523
5       BBB 481        462 16.530636 ExSituBBB    NA 16.13824
6       CCC 219        199  9.510700 ExSituBBB   161 21.43694

Thus, any suggestions on how to add a linetype legend with a solid line = InSitu and a dotted line = ExSitu would be appreciated.

Example: I want to add...

figIII

Thanks in advance.

share|improve this question
1  
Not a direct answer to your question and perhaps a matter of taste, anyway, here's a thought: to me it seems slightly redundant to map study area both to x and colour. Perhaps an idea would be to use colour only to differentiate between In- and Ex-situ? –  Henrik Feb 11 at 15:05
    
@Henrik, I need to have the color of the InSituPred and Obs match the StudyArea. In addition, I wanted to have the variable color match that of StudyArea. I have added a few more additions to the questions that provide more specifics and build from the comments of @shadow. thanks for your thoughts. –  B. Davis Feb 11 at 17:48

1 Answer 1

up vote 2 down vote accepted

You can use ?scale_color_discrete to specify the breaks. In your case this could be something like the following:

ggplot(Data, aes(x=StudyArea))+
  geom_point(aes(y=value, color=variable),size=3, shape=1)+
  geom_errorbar(aes(ymin=value-SE, ymax=value+SE, color=variable),lty = 2, cex=0.75)+
  geom_point(aes(y=InSituPred, color=StudyArea),size=3, shape=1)+
  geom_errorbar(aes(ymin=InSituPred-InSituSE, ymax=InSituPred+InSituSE, color=StudyArea),lty=1,cex=0.75)+
  geom_point(aes(y=Obs, color=StudyArea),shape="*",size=12) +
  scale_color_discrete(breaks=c("ExSituAAA", "ExSituBBB", "ExSituCCC"))

EDIT: Yes, it is possible to specify the colors. Since I don't really understand what coloring scheme you want, here are some examples (not all are meant entirely seriously).

p <- ggplot(Data, aes(x=StudyArea))+
  geom_point(aes(y=value, color=variable),size=3, shape=1)+
  geom_errorbar(aes(ymin=value-SE, ymax=value+SE, color=variable),lty = 2, cex=0.75)+
  geom_point(aes(y=InSituPred, color=StudyArea),size=3, shape=1)+
  geom_errorbar(aes(ymin=InSituPred-InSituSE, ymax=InSituPred+InSituSE, color=StudyArea),lty=1,cex=0.75)+
  geom_point(aes(y=Obs, color=StudyArea),shape="*",size=12) 
p +  scale_color_manual(name="Study Area \nPrediction", 
                        values=c("red", "blue", "darkgreen","red","blue","darkgreen"), 
                        breaks=c("ExSituAAA", "ExSituBBB", "ExSituCCC"))
p +  scale_color_manual(name="Study Area \nPrediction", 
                        values=c("black", "black", "black", "red","blue","darkgreen"), 
                        breaks=c("ExSituAAA", "ExSituBBB", "ExSituCCC"))
p +  scale_color_manual(name="Study Area \nPrediction", 
                        values=c("white", "yellow", "pink", "red","blue","darkgreen"), 
                        breaks=c("ExSituAAA", "ExSituBBB", "ExSituCCC"))

ADDITION: This would be much easier, if you clean and restructure your data before plotting. Here's my attampt:

df <- with(Data, data.frame(area=rep(StudyArea, 2),
                            exarea=c(variable,rep(variable[c(1,4,7)], 3)),
                            value=c(value, InSituPred), 
                            se=c(SE, InSituSE), 
                            obs = rep(Obs, 2),
                            situ=rep(c("in", "ex"), each=nrow(Data))))
df <- df[!duplicated(df),]

Then the plotting becomes much easier:

p <- ggplot(df, aes(x=area))+
  geom_point(aes(y=value, color=exarea),size=3, shape=1)+
  geom_errorbar(aes(ymin=value-se, ymax=value+se, color=exarea, lty=situ), cex=0.75)+                   
  geom_point(aes(y=obs, color=exarea),shape="*",size=12) 

p +  scale_color_manual(name="Study Area \nPrediction", 
                    values=c("red", "blue", "darkgreen"), 
                    breaks=c("ExSituAAA", "ExSituBBB", "ExSituCCC")) +
   scale_linetype_manual(name="Situ", 
                         values=c(1,2), 
                         breaks=c("in", "ex"), 
                         labels=c("InSitu", "ExSitu"))

EDIT2: It is possible to use the original data for this. You have to put the lty inside the aes-function and then use scale_linetype_manual as before. Here it goes:

p <- ggplot(Data, aes(x=StudyArea))+
  geom_point(aes(y=value, color=variable),size=3, shape=1)+
  geom_errorbar(aes(ymin=value-SE, ymax=value+SE, color=variable, lty="2"), cex=0.75)+
  geom_point(aes(y=InSituPred, color=StudyArea),size=3, shape=1)+
  geom_errorbar(aes(ymin=InSituPred-InSituSE, ymax=InSituPred+InSituSE, color=StudyArea, lty="1"),cex=0.75)+
  geom_point(aes(y=Obs, color=StudyArea),shape="*",size=12) 
p +  scale_color_manual(name="Study Area \nPrediction", 
                        values=c("red", "blue", "darkgreen","red","blue","darkgreen"), 
                        breaks=c("ExSituAAA", "ExSituBBB", "ExSituCCC")) + 
  scale_linetype_manual(name="Situ", 
                        values=c(1,2), 
                        breaks=c("1", "2"), 
                        labels=c("InSitu", "ExSitu"))

It really is usually better practice to restructure the data instead. If you want to make any more changes to this code, it will be very hard to do. The code is already rather difficult to read. So if it is at all possible to restructer your dataset (it usually is) then consider taking the approach mentioned above.

share|improve this answer
    
@shodow, thanks for the answer. Once I use scale_color_discrete() is it also possible to specify the colors used? I want EsSituAAA:ExSituBBB to be c("red","blue","darkgreen"). However, simply adding the code below results in an error as there are two specifications for color. scale_color_manual(values=c("red","blue","darkgreen"),labs(fill="StudyArea\n Prediction")) –  B. Davis Feb 11 at 15:36
    
I have added an ADDITION above, but can also open a new question... Thanks for your continued helps! –  B. Davis Feb 11 at 17:21
    
Thanks! Your restructure is very helpful. For application to another data set that I have however, manual addition of linetype is a bit more straight forward. Is it possible to add the linetype manually as in the example above? –  B. Davis Feb 12 at 22:25

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