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I had a problem with ggplot that I am not able to solve, so maybe someone here can point out the reason. Sorry that I am not able to upload my dataset, but some data description can be found below. The output of the ggplot is shown below, except NO line, every other thing is OK.

> all.data<-read.table("D:/PAM/data/Rural_Recovery_Edit.csv",head=T,sep=",")
> all.data$Water<-factor(all.data$Water,labels=c("W30","W60","W90"))
> all.data$Polymer<-factor(all.data$Polymer,labels=c("PAM-0  ","PAM-10  ","PAM-40  "))
> all.data$Group<-factor(all.data$Group,labels=c("Day20","Day25","Day30"))
> dat<-data.frame(Waterconsump=all.data[,9],Water=all.data$Water,Polymer=all.data$Polymer,Age=all.data$Group)

> ggplot(dat,aes(x=Water,y=Waterconsump,colour=Polymer))+
+ stat_summary(fun.y=mean, geom="line",size=2)+
+ stat_summary(fun.ymin=min,fun.ymax=max,geom="errorbar")+#,position="dodge"
+ facet_grid(~Age)

> dim(dat)
[1] 108   4
> head(dat)
  Waterconsump Water  Polymer   Age
1         10.5   W30 PAM-10   Day20
2         10.3   W30 PAM-10   Day20
3         10.1   W30 PAM-10   Day20
4          7.7   W30 PAM-10   Day20
5          8.6   W60 PAM-10   Day20
6          8.4   W60 PAM-10   Day20
> table(dat$Water)

W30 W60 W90 
 36  36  36 
> table(dat$Polymer)

 PAM-0   PAM-10   PAM-40   
      36       36       36 
> table(dat$Age)

Day20 Day25 Day30 
   36    36    36 

The out put of the ggplot and, if I changed the geom into "bar", the output is OK. The ggplot output when geom="bar"

below is the background for this Q
#

I would like to plot several variables that were subjected to the same, 3 factors. Using xyplot, I am able to plot 2 of them, within one figure. However, I have no idea how to include the third, and arrange the figure into N subplots (N equals the level number of the third factor). So, my aims would be:

  1. Plot the 3rd facotors, and split the plot into N subplots, where N is the levels of the 3rd factor.

  2. Better to work as a function, as I need to plot a several variables. Below is the example figure with only two factors, and my working example to plot 2 factors.

Thanks in advance~

Marco

library(reshape)
library(agricolae)
library(lattice)
yr<-gl(10,3,90:99)
trt<-gl(4,75,labels=c("A","B","C","D"))

third<-gl(3,100,lables=c("T","P","Q")) ### The third factor to split the figure in to 4 subplots

dat<-cbind(runif(300),runif(300,min=1,max=10),runif(300,min=100,max=200),runif(300,min=1000,max=1500))
colnames(dat)<-paste("Item",1:4,sep="-")
fac<-factor(paste(trt,yr,sep="-"))
dataov<-aov(dat[,1]~fac)
dathsd<-sort_df(HSD.test(dataov,'fac'),'trt')
trtplt<-gl(3,10,30,labels=c("A","B","C"))
yrplt<-factor(substr(dathsd$trt,3,4))

prepanel.ci <- function(x, y, ly, uy, subscripts, ...) 
{ 
    x <- as.numeric(x) 
    ly <- as.numeric(ly[subscripts]) 
    uy <- as.numeric(uy[subscripts]) 
    list(ylim = range(y, uy, ly, finite = TRUE)) 
} 
panel.ci <- function(x, y, ly, uy, subscripts, pch = 16, ...) 
{ 
    x <- as.numeric(x) 
    y <- as.numeric(y) 
    ly <- as.numeric(ly[subscripts]) 
    uy <- as.numeric(uy[subscripts]) 
    panel.arrows(x, ly, x, uy, col = "black", 
                 length = 0.25, unit = "native", 
                 angle = 90, code = 3) 
    panel.xyplot(x, y, pch = pch, ...) 
} 

xyplot(dathsd$means~yrplt,group=trtplt,type=list("l","p"),
        ly=dathsd$means-dathsd$std.err,
        uy=dathsd$means+dathsd$std.err,
        prepanel = prepanel.ci, 
        panel = panel.superpose, 
        panel.groups = panel.ci 
        )

This is the figure I would like mydata to be! Using Deepayan's solution, I am able to add the error bar like this based on 2 factors

share|improve this question
    
@Marco I see you've also come up with a custom panel function whilst I was coming up with something similar. It would have been better to post your own answer rather than edit the Q as now the Q solves itself. If you post you solution as an answer, we can rollback the Q? Or have we still not answered the Q fully? –  Gavin Simpson Apr 17 '11 at 9:47
    
@Gavin, Sorry for the inconvenience, while posting the Q, I am also trying. –  Marco Apr 17 '11 at 9:59
    
@Marco - no inconvenience, I think you've done a good job on the Q. Wasn't sure if what you posted was a solution or just extra code to get closer to a solution. I see from your comment below that we still aren't fully there. I've replied with a general solution. –  Gavin Simpson Apr 17 '11 at 10:04
    
I tried to be more closer to my goal, and the above figure only show the intermediate result. I think my goal is a 3-subplot figure that shows the three factors. I tried to use means ~ yrplt | factor3 and found only one line was shown in each subplot, representing only one treatment of factor1, maybe I need to adjust something in the main function of xyplot –  Marco Apr 17 '11 at 10:17
    
I think the problem is more how should the data you show be split by the third factor. Perhaps you example data hasn't got enough replications to be split again by a third variable? –  Gavin Simpson Apr 17 '11 at 10:26

2 Answers 2

up vote 6 down vote accepted

Here is another way of doing it, using the magic of ggplot. Because ggplot will calculate summaries for you, I suspect it means you can skip the entire step of doing aov.

The key is that your data should be in single data.frame that you can pass to ggplot. Note that I have created new sample data to demonstrate.

library(ggplot2)

df <- data.frame(
  value = runif(300),
  yr = rep(1:10, each=3),
  trt = rep(LETTERS[1:4], each=75),
  third = rep(c("T", "P", "Q"), each=100)
)

ggplot(df, aes(x=yr, y=value, colour=trt)) + 
  stat_summary(fun.y=mean, geom="line", size=2) +
  stat_summary(fun.ymin=min, fun.ymax=max, geom="errorbar") +
  facet_grid(~third)

enter image description here

You can go one step further and produce facets in two dimensions:

ggplot(df, aes(x=yr, y=value, colour=trt)) + 
  stat_summary(fun.y=mean, geom="line", size=2) +
  stat_summary(fun.ymin=min, fun.ymax=max, geom="errorbar") +
  facet_grid(trt~third)

enter image description here

share|improve this answer
    
Wooo, this is pretty cool! Thanks very much, @Andrie! Only one question, I am wondering, why didn't the four factors A:D appear in each subplot? –  Marco Apr 17 '11 at 13:41
    
@Marco I guess this would be the result of the factors not crossing at all. If any of the factors crossed, they would have appeared in the same subplot. In other words, it will be a result of the way the dummy data.frame is constructed. –  Andrie Apr 17 '11 at 13:44
    
Yes, that's the problem, I should have checked the example data. Thanks Andrie~ –  Marco Apr 18 '11 at 0:00
    
I had a problem when applying your ggplot code. There were everything except lines. I checked the data carefully but cannot find the reason. –  Marco Apr 18 '11 at 6:42

This gets pretty close, but I forget how to colour the error lines using the group variable in Lattice and Deepayan's book is at work.

## format a new data structure with all variables we want
dat <- data.frame(dathsd[, c(2,5)], treat = trtplt, yrplt = yrplt,
                  upr = dathsd$means + 2 * dathsd$std.err,
                  lwr = dathsd$means - 2 * dathsd$std.err)
## compute ylims
ylims <- range(dat$lwr, dat$upr)
ylims <- ylims + (c(-1,1) * (0.05 * diff(ylims)))
## plot
xyplot(means ~ yrplt, data = dat, group = treat, lwr = dat$lwr, upr = dat$upr,
       type = c("p","l"), ylim = ylims,
       panel = function(x, y, lwr, upr, ...) {
           panel.arrows(x0 = x, y0 = lwr, x1 = x, y1 = upr,
                        angle = 90, code = 3, length = 0.05)
           panel.xyplot(x, y, ...)
       })

And produces:

xyplot with error bars

share|improve this answer
    
@Gavin, thanks very much! Sorry that I changed the post just before your answer. I think I didnot express my though very clearly, I need to introduce a third factor (3 levels, for example), and then split the current figure into 3 subplots using this factor. –  Marco Apr 17 '11 at 9:51
    
Well, that is easy. Which is the factor in the example data you want to split on? If this isn't in the data, can you fake something I can use? It is as easy as doing means ~ yrplt | factor3 in the formula where factor3 is the factor you want to split the data into 3 panels by. –  Gavin Simpson Apr 17 '11 at 9:53
    
@Gavin, thank very much! But how about the HSD.test, as I also tried to include the significance result from HSD.test into the figues. –  Marco Apr 17 '11 at 10:01
    
@Marco How do you want to show/represent the significance? I usually see papers with bars or stars (*) over significant combinations. Also how are you defining significant? The output from HSD.test() doesn't seem to show significance so you need to create a variable that indicates significance or not. –  Gavin Simpson Apr 17 '11 at 10:09
    
By significance, I mean multicomparison result, ie, common letters show insignificant, or just a star to show overall difference. Why do you think the output from HSD.test() was not significance? –  Marco Apr 17 '11 at 10:13

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