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The other day I asked a question about how to get a histogram of the date differences. I would like to do the same thing, but for groups and with a box plot, using lattice's bwplot. Essentially, want 1 image with 5 box plots for each of the 5 different sources I have (I've shown 2 below in the example) -- something like this image.

I've spent quite some time trying to figure this out, but cannot get it.

The closest I could come up

df <- read.csv("~/dates.csv", header = TRUE, sep = ",", quote = "\"")
a <- aggregate(as.POSIXct(as.character(df$REQUEST_DATE), format="%m/%d/%Y %H:%M:%S"), list(SOURCE=df$SOURCE), diff) # not sure if this is right (and I need -diff, but can't do that)
# now what?  I seem to know how to access a$SOURCE, but don't know how to look at the data associated with a$SOURCE.

The data (~/dates.csv):

"SOURCE","REQUEST_DATE"
"A","09/11/2011 09:28:48"
"A","09/11/2011 09:21:15"
"A","09/11/2011 09:15:42"
"A","09/11/2011 09:12:18"
"D","09/13/2011 09:06:53"
"D","09/13/2011 09:06:18"
"D","09/13/2011 08:56:55"
"D","09/13/2011 08:56:18"
"D","09/13/2011 08:55:43"
"D","09/13/2011 08:39:07"
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1 Answer 1

up vote 3 down vote accepted

Here is a solution using the plyr package for the data analysis, and ggplot2 package for the plot:

Read the data. Note the use of stringsAsFactors=FALSE - this saves lots of hassle converting to as.character later:

df <- read.csv(textConnection('
"SOURCE","REQUEST_DATE"
"A","09/11/2011 09:28:48"
"A","09/11/2011 09:21:15"
"A","09/11/2011 09:15:42"
"A","09/11/2011 09:12:18"
"D","09/13/2011 09:06:53"
"D","09/13/2011 09:06:18"
"D","09/13/2011 08:56:55"
"D","09/13/2011 08:56:18"
"D","09/13/2011 08:55:43"
"D","09/13/2011 08:39:07"
'), stringsAsFactors=FALSE)

Convert to POSIX date format:

df$REQUEST_DATE <- as.POSIXct(df$REQUEST_DATE, format="%m/%d/%Y %H:%M:%S")

Load plyr and use ddply to a) group by SOURCE, b) calculate difftime, c) group results into a data.frame, all in one step:

library(plyr)
df_diff <- ddply(df, .(SOURCE), summarize, TIME_DIFF=-unclass(diff(REQUEST_DATE)))
df_diff
  SOURCE TIME_DIFF
1      A      7.55
2      A      5.55
3      A      3.40
4      D     35.00
5      D    563.00
6      D     37.00
7      D     35.00
8      D    996.00

Load ggplot2 and plot. The plot looks a bit rubbish - that's because the sample dataset is tiny. It will work better with larger datasets, i.e. you will get clear separation between median, range and outliers.

library(ggplot2)
ggplot(df_diff, aes(y=TIME_DIFF, x=SOURCE)) + geom_boxplot()

enter image description here

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Wow. You're crazy fast. Thanks. –  Ron Garrity Sep 13 '11 at 14:42
    
Ok, I promise this is my last question for you. How would I do the same thing for a histogram? I think I need to see the probabilities of each bin too. Something like this, where each section is a SOURCE. –  Ron Garrity Sep 13 '11 at 15:35
    
I think I may have got it: ggplot(df_diff, aes(x=TIME_DIFF)) + geom_histogram(aes(y = ..density..), binwidth = 50) + facet_wrap(~SOURCE, ncol = 2, as.table = FALSE) + coord_cartesian(xlim=c(0, 1800), wise=TRUE). Can you tell me if that's right? –  Ron Garrity Sep 13 '11 at 15:46
    
@RonGarrity That looks like a perfectly sensible analysis. Well done for using ggplot to its full potential. –  Andrie Sep 13 '11 at 17:13

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