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I am working on a large dataset showing how people travel. I need to calculate the amount of unique days people travel on. The table below shows ID, which is unique to each particular person. Associated with each ID is the dates they have travelled on - for some people this may be one trip per day, for others there may well be multiple trips on each day (e.g. person "1" took two trips on the 4th). What I need R to do is pick out the total number of unique days for all people in the dataset (e.g. person 1 = 2, person 2=3, person 3=1, person 4=2 - therefore the total using the mini-dataset below should be 8.

ID = c(1,1,1,2,2,2,2,3,4,4,4,4)
date = c("4th Nov","4th Nov","5th Nov","5th Nov","6th Nov","7th Nov","7th Nov","8th Nov","6th Nov","6th Nov","7th Nov","7th Nov")

Any suggestions on the coding for R would be gratefully received.

Many thanks.

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As a side note, it is regarded as bad practice to reuse reserved words in R, e.g. data, date. They already have a function assigned to them. Redefining them by using that name for a dataset can lead to nasty problems. –  Paul Hiemstra Dec 8 '11 at 12:59
@PaulHiemstra: Technically "data" and "date" aren't reserved, which is why you can assign to them. See ?Reserved for a list of truly reserved words. I agree that it is usually bad form to name variables after functions. –  Richie Cotton Dec 8 '11 at 14:23
I see, then I'm using the term reserved a somewhat broader sense. Thanks for the comment. –  Paul Hiemstra Dec 8 '11 at 17:44

3 Answers 3

up vote 3 down vote accepted

Again a task for ddply:

ddply(data, .(id), summarise, noDays = length(unique(date)))

  ID noDays
1  1      2
2  2      3
3  3      1
4  4      2
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You should make friends with the plyr package. The ddply function makes this bit of analysis very straight-forward. It takes a data.frame, splits it according to some criterion (in this case ID), applies a function and combines the pieces intoa a data.frame:

ddply(data, .(ID), summarise, days=length(unique(date)))
  ID days
1  1    2
2  2    3
3  3    1
4  4    2

Or with base R, use split and sapply to get a vector with your desired results:

sapply(with(data, split(date, ID)), function(x)length(unique(x)))
1 2 3 4 
2 3 1 2 
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Hmmm, we posted within seconds of each other, with exactly the same answer. What is etiquette in this case? You had not posted when I started typing... –  Paul Hiemstra Dec 8 '11 at 12:58
@PaulHiemstra You will find this happens from time to time. I don't think there is any single accepted etiquette. –  Andrie Dec 8 '11 at 13:05
+1 for your answer, it was such a good answer :). –  Paul Hiemstra Dec 8 '11 at 13:06
@PaulHiemstra Returned the favour :) You posted a really good answer :-) –  Andrie Dec 8 '11 at 13:07
Hmmm, feels like people who are sending each other Linkedin recommendations :) –  Paul Hiemstra Dec 8 '11 at 13:09

Also possible with tapply from base R.

with(data, tapply(date, ID, function(x) length(unique(x))))

As an alternative to length(unique(x)) you can utilise the fact that date is a factor and count the levels.

with(data, tapply(date, ID, function(x) nlevels(x[, drop = TRUE])))

Bonus thoughts:

To solve your problem of defining a variable called "date", note that you can include vectors in your call to data.frame, like so.

data <- data.frame(
  ID = c(1,1,1,2,2,2,2,3,4,4,4,4),
  date = c("4th Nov","4th Nov","5th Nov","5th Nov","6th Nov","7th Nov","7th Nov","8th Nov","6th Nov","6th Nov","7th Nov","7th Nov")

When you have strings that have a lot of repeated content, it is often better to write them using paste. Your date string can be created more consisely using

paste(c(4, 4, 5, 5, 6, 7, 7, 8, 6, 6, 7, 7), "th Nov", sep = "")

Finally, if you want to do any kind of analysis with dates, you'll want to store them in one of the many date formats. For this, you're best not bothering with the "th", but keep the dates in a form that's easy for computers to parse, like "dd/mm/yyyy". Then call strptime.

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