Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I know how to create regular plots with error bars for, say, one factor (e.g. experiment) and one measurement (e.g. quality). I first summarize the data to get mean and CI using the summarySE function given on this site. For example:

   hrc_id experiment  N  quality        sd         se         ci
        0      FB_IS 77 3.584416 0.6757189 0.07700532 0.15336938
        0     FB_ACR 77 3.779221 0.6614055 0.07537416 0.15012064
        1      FB_IS 77 3.038961 0.7854191 0.08950681 0.17826826
        1     FB_ACR 77 3.129870 0.8483831 0.09668223 0.19255935
...

That way I could plot:

ggplot(d, aes(hrc_id, quality), quality, color = experiment)) + 
    geom_point(position = position_dodge(width = .5)) +
    geom_errorbar(aes(ymin = quality - ci, ymax = quality + ci), width = .5, position = "dodge")


However, now I have to do the same with two measurements—not just quality, but also confidence. For example, my data might look as follows:

hrc_id confidence confidence_ci  quality quality_ci
     0   3.573718    0.02068321 4.576923 0.02864818
     1   3.403846    0.03193104 1.658120 0.04441434
    10   3.160256    0.02520483 3.038462 0.04476492
...

How would I go about plotting confidence (with confidence_ci) and quality (with quality_ci) next to each other, for each hrc_id?

I thought I could melt the dataframe so that confidence and quality would be the measurement variables, but then I lose the CI values that belong to them.

share|improve this question

2 Answers 2

up vote 1 down vote accepted

You can convert your dataframe to long format with grouped columns in one step using reshape(...). Assuming your dataframe is df:

gg <- reshape(df,idvar="hrc_id",               # idvar: identifies cases
              times=c("confidence","quality"), # group of columns to be reshaped
              timevar="measurement",           # column name to use for grouping vars
              varying=2:5,                     # columns are to be reshaped
              v.names=c("value","value.ci"),   # column names for reshaped values
              direction="long")                # convert to long format
gg
#               hrc_id measurement    value   value.ci
# 0.confidence       0  confidence 3.573718 0.02068321
# 1.confidence       1  confidence 3.403846 0.03193104
# 10.confidence     10  confidence 3.160256 0.02520483
# 0.quality          0     quality 4.576923 0.02864818
# 1.quality          1     quality 1.658120 0.04441434
# 10.quality        10     quality 3.038462 0.04476492

As far as I know you cannot do this with melt(...) - you'd have to use the rbind approach mentioned in your comment.

share|improve this answer
    
That's precisely the function I needed, thank you! –  slhck Dec 31 '13 at 8:22

Your data frame should eventually look like this (melt might be the right tool to use, but I don't recall the syntax at the moment):

hrc_id measurment value ci  
 0   confidence 3.573718    0.02068321 
 0   quality    4.576923    0.02864818

Then you can plot using:

p = ggplot(d, aes(x = hrc_id, y = value, color = measurment))
p = p + geom_errorbar (aes(ymin = value - ci, ymax = value + ci))
p = p + geom_point(position = position_dodge(width = .5))
p
share|improve this answer
1  
Ok, I think I figured it out. I had to melt twice, with ci being an ID variable, and then rbind the two molten dataframes. –  slhck Dec 30 '13 at 19:57
    
You mean you had to separate the original data frame into two data frames (columns 1,2,3 and 1,4,5 respectively), perform a melt on each of them and rbind the result, right? –  Peter Lustig Dec 30 '13 at 20:04
    
Yes, exactly. Maybe one day I'll write a function to wrap this workflow. –  slhck Dec 30 '13 at 20:13

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.