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.

G'day All,

I am working in R. Sorry about this really basic question, but I am a bit stuck. I have a data set of presence/absence point count data with date of count, and site number (see below). I would like to ultimately create a data.frame that collates all counts by grid cell number and has each visit to a site as a new visit (see below). I can't figure out how to do this, so thought I would take an easier route and make a column that gives a visit number for each record. So, the column would give a number for each record by the date of the visit within each site group (see below). I can't figure out how to do this either! Any help would be great, thank you in advance.

Kind regards, Adam

I have this:

Site    date
1   12/01/2000
1   24/02/2000
1   13/08/2001
2   14/01/2000
2   21/01/2002
3   1/01/1999
3   21/04/2000

Ultimately want this:

Site           vist1              v2                 v3
1              12/01/2000         24/02/2000         13/08/2001
2              14/01/2000         21/01/2002         na
3              01/01/1999         21/04/2000         na

But this would be good:

Site   date        visit
1      12/01/2000  1
1      24/02/2000  2
1      13/08/2001  3
2      14/01/2000  1
2      21/01/2002  2
3      01/01/1999  1
3      21/04/2000  2
share|improve this question
Adam: Usable example data helps us a lot. If you have these loaded, can you give us a short subset of it. test_data=head(data); dput(data); then paste results from the dput. thanks. –  Maiasaura Feb 5 '12 at 23:54
Also note that in the edit window {} will preserve formatting for code/data. –  Maiasaura Feb 5 '12 at 23:55

3 Answers 3

up vote 1 down vote accepted

Basically, you are wanting to reshape your data from a long format to a wide format, with repeated observations from a Site all in a single line. The base R function reshape() was designed for just this task.

The only (slight) complication is that you first need to add a column (which I here call obsNum) that identifies which is the first, second, third etc. observation at a Site. By setting timevar = "obsNum", you can then let reshape() know into which column you want to put each of the values of date.

df <- read.table(text = "Site date
1 12/01/2000
1 24/02/2000
1 13/08/2001
2 14/01/2000
2 21/01/2002
3 1/01/1999
3 21/04/2000", header=T, stringsAsFactors=FALSE)

df$obsNum <- unlist(sapply(rle(df$Site)$lengths, seq))
reshape(df, idvar="Site", timevar="obsNum", direction="wide")

#   Site     date.1     date.2     date.3
# 1    1 12/01/2000 24/02/2000 13/08/2001
# 4    2 14/01/2000 21/01/2002       <NA>
# 6    3  1/01/1999 21/04/2000       <NA>
share|improve this answer
Thanks Josh, that works a treat! I will definitely have to check out those functions in more depth, they are really useful. Regards, Adam –  Adam Feb 6 '12 at 5:28

Here is another solution with ddply and dcast.

# Convert the date column into actual dates
df$date <- as.Date(df$date, format="%d/%m/%Y")
# Ensure that the data.frame is sorted
df <- df[ order(df$site, df$date), ]

# Number the visits for each site
df$visit <- 1
d <- ddply(df, "Site", transform, visit=cumsum(visit))

# Convert to a wide format
# (Since dcast forgets the Date type, convert it to strings
# before and back to dates after.)
d$date <- as.character(d$date)
d <- dcast(d, Site ~ visit, value.var="date")
d[,-1] <- lapply(d[,-1], as.Date)
share|improve this answer

Here is another take on the solution using plyr and reshape2.

require(plyr); require(reshape2); require(lubridate)
df <- ddply(df, .(Site), transform, visit = rank(dmy(date)))
dcast(df, Site ~ visit, value.var = 'date')
share|improve this answer

Your Answer


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.