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I'm stuck on a problem calculating travel dates. I have a data frame of departure dates and return dates.

Departure  Return
1    7/6/13  8/3/13
2    7/6/13  8/3/13
3   6/28/13  8/7/13

I want to create and pass a function that will take these dates and form a list of all the days away. I can do this individually by turning each column into dates.

## Turn the departure and return dates into a readable format
Dept <- as.Date(travelDates$Dept, format = "%m/%d/%y")
Retn <- as.Date(travelDates$Retn, format = "%m/%d/%y")
travel_dates <- na.omit(data.frame(dept_dates,retn_dates))

seq(from = travel_dates[1,1], to = travel_dates[1,2], by = 1)

This gives me [1] "2013-07-06" "2013-07-07"... and so on. I want to scale to cover the whole data frame, but my attempts have failed.

Here's one that I thought might work.

days_abroad <- data.frame()
get_days <- function(x,y){
  all_days <- seq(from = x, to = y, by =1)
  c(days_abroad, all_days)
  return(days_abroad)
}
get_days(travel_dates$dept_dates, travel_dates$retn_dates)

I get this error:

Error in seq.Date(from = x, to = y, by = 1) : 'from' must be of length 1 

There's probably a lot wrong with this, but what I would really like help on is how to run multiple dates through seq().

Sorry, if this is simple (I'm still learning to think in r) and sorry too for any breaches in etiquette. Thank you.

share|improve this question
    
Maybe apply function helps you to convert everything to a date and from there extract the list – Llopis Feb 14 '14 at 16:17
up vote 1 down vote accepted

EDIT: updated as per OP comment.

How about this:

travel_dates[] <- lapply(travel_dates, as.Date, format="%m/%d/%y")
dts <- with(travel_dates, mapply(seq, Departure, Return, by="1 day"))

This produces a list with as many items as you had rows in your initial table. You can then summarize (this will be data.frame with the number of times a date showed up):

data.frame(count=sort(table(Reduce(append, dts)), decreasing=T))

#            count
# 2013-07-06     3
# 2013-07-07     3
# 2013-07-08     3
# 2013-07-09     3
# ...

OLD CODE:

The following gets the #days of each trip, rather than a list with the dates.

transform(travel_dates, days_away=Return - Departure + 1)

Which produces:

#    Departure     Return days_away
# 1 2013-07-06 2013-08-03   29 days
# 2 2013-07-06 2013-08-03   29 days
# 3 2013-06-28 2013-08-07   41 days

If you want to put days_away in a separate list, that is trivial, though it seems more useful to have it as an additional column to your data frame.

share|improve this answer
    
Thank you. But I am sorry that I wasn't clear. I am looking for the date of each day that a person is away, not just the number of days. That's why I was trying to use seq(). The second step in my project is to work out on what days of the year most people are away from the office. Thanks, too, for introducing me to transform(). – user3307442 Feb 14 '14 at 20:39
    
@user3307442, see edit. I think that addresses your concerns. – BrodieG Feb 14 '14 at 21:09
    
Thank you! It works a charm! I'm very grateful. I learned a lot. – user3307442 Feb 14 '14 at 22:06

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