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Hello I'm new to R and am having trouble completing what should be a fairly simple task. I'm sure there is a straightforward solution, but I couldn't find it online (including on StackOverflow)

I have a dataframe with Cases, and Observations and a variable Amount. Cases are factors, observations are integers, and together they form an indices that so that the row containing Case = 3 and Observation = 4 corresponds to the 4th observation of the 3rd Case, and the row containing Case = 4 and Observation = 1 corresponds to the first observation of the 4th case.

I am trying to write a script that calculates the change in Amount from one observation within each case to the next observation within the same case, and then stores that difference in a new column in the dataframe at the row associated with the first these two observation. So when I am done the new column will contain the change in the amount from the current rows observation to the next observation within the same case.

the dataframe is of the form :

case <- c(1,2,3,4,5,6,1,2,3,4,5,6,1,2,3,4)
obs <- c(rep(1,6),rep(2,6),rep(3,4))
amount <- c(0,2,12,1,0,20,1,2,22,2,1,50,5,2,100,28)
d.example <- data.frame(case,obs,amount)
d.example$case <- as.factor(d.example$case)
case obs Amount 
1    1   0
2    1   2 
3    1   12
4    1   1
5    1   0 
6    1   20
1    2   1
2    2   2
3    2   22
4    2   2
5    2   1
6    2   50
1    3   5
2    3   2
3    3   100
4    3   28

Note: the data is not balanced each case can have a different number of observations

The result should be ( for now I am placing -1 in for NA)

case obs Amount deltaAmount
1    1   0      1
2    1   2      0
3    1   12     10
4    1   1      1
5    1   0      1
6    1   20     30
1    2   1      4
2    2   2      0
3    2   22     78
4    2   2      26
5    2   1      -1
6    2   50     -1
1    3   5      -1
2    3   2      -1
3    3   100    -1
4    3   28     -1

I've been attempting to do this using a nested for loops

deltaAmount <- NULL
deltaAmount <- rep(-1, length(d$Case))
d$deltaAmount <- deltaAmount

x <- NULL
y <- NULL


for( i in unique(d$Case)) {   # i is the case index
    x <- NULL
# set x equal to a vector containing all the observations for the ith case except the first observation 
    x <- subset( unique(d$Observation[which(d$Case == i)]), unique( d$Observation[which(d$Case == i)]) > 1)

    for( j in x ) { # j is the observation index (starts at 2 to avoid the error that would occur if we subtract a preceeding obsevation from the first observation)

        d$AmountRaised[which(d$Case == i) & which(d$Observation == j)] - d$AmountRaised[which(d$Case == i) & which(d$Observation == j-1)] -> y
        y -> d$deltaAmount[which( d$Case == i & d$Observation == j-1 )] 

    }
}

When I run this the command take a very long time to run. Almost as if it is stuck in an infinite loop ( I have yet to run this to its completion) when I terminate the program R states that I have more than 50 warning messages. They are all of the form

1: In which(d$Case == i) & which(d$Observation == j) : longer object length is not a multiple of shorter object length

However the additional column is created and several values have been changed from -1 to 0.

My data frame is large (770000 rows).

Once I get this to work I will need to do the same thing except with dates using difftime(). I realize I am probably going about this the wrong way (ie there is probably a better way to do this without using nested for loops), but please keep in mind that I need to take the difference between sets of dates, if you suggest a different approach.

Sorry for asking such a long question, I hope I made everything clear.

Thankyou in advance for your help.

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2 Answers 2

up vote 2 down vote accepted

Assuming data is sorted by obs (easy enough to do), here is an implementation in base R:

d.example$case.delta <- 
  with(d.example, ave(amount, case, FUN=function(x) c(diff(x), NA)))

The ave function breaks up amount vector by case, and then for each of the groups uses the diff function (slightly modified as you can see). This produces (ordered by case for clarity):

with(d.example, d.example[order(case, obs), ])
#    case obs amount case.delta
# 1     1   1      0          1
# 7     1   2      1          4
# 13    1   3      5         NA
# 2     2   1      2          0
# 8     2   2      2          0
# 14    2   3      2         NA
# 3     3   1     12         10
# 9     3   2     22         78
# 15    3   3    100         NA
# 4     4   1      1          1
# 10    4   2      2         26
# 16    4   3     28         NA
# 5     5   1      0          1
# 11    5   2      1         NA
# 6     6   1     20         30
# 12    6   2     50         NA
share|improve this answer
    
Do you have any suggestions as to how this could be adapted for use with timediff(). Right now I am using d.test$Time.Delta <- with(d.test, ave(d.test$CurrentDate, d.test$Case, FUN=function(x) c(difftime(x, units = "days"), NA ))) –  user6179 Feb 28 at 6:30
    
@user6179, you will need to do something like c(difftime(head(x, -1L), tail(x, (-1L))), NA) –  BrodieG Feb 28 at 12:55
    
I tried d$Delta.T <- with(d, ave(d$CurrentDate, d$Case, FUN=function(x) c(difftime(head(x, -1L), tail(x, (-1L))), NA ))) but that didn't seem to work, specifically the command didn't terminate. –  user6179 Feb 28 at 15:22
    
@user6179, why don't you update your post with a dput of a small meaningful portion of your data. Hard to debug without it. –  BrodieG Feb 28 at 16:31
    
This is the output I got from dput: let me know if this is in the wrong format: –  user6179 Feb 28 at 19:41

This is just the situation that plyr (and dplyr) are built for - split/apply/combine. You can use diff() to get the differences between rows. As pointed out in the comments, diff() is dependent on order, so this will only work if the ordering is appropriate:

With dplyr:

library(dplyr)
d.example %.%
  group_by(case) %.%
  mutate(deltaAmount = c(diff(amount), NA))

#    case obs amount deltaAmount
# 1     1   1      0           1
# 2     2   1      2           0
# 3     3   1     12          10
# 4     4   1      1           1
# 5     5   1      0           1
# 6     6   1     20          30
# 7     1   2      1           4
# 8     2   2      2           0
# 9     3   2     22          78
# 10    4   2      2          26
# 11    5   2      1          NA
# 12    6   2     50          NA
# 13    1   3      5          NA
# 14    2   3      2          NA
# 15    3   3    100          NA
# 16    4   3     28          NA

and with plyr:

library(plyr)
d.out <- ddply(d.example, .(case), mutate, 
               deltaAmount = c(diff(amount), NA))
d.out
#    case obs amount deltaAmount
# 1     1   1      0           1
# 2     1   2      1           4
# 3     1   3      5          NA
# 4     2   1      2           0
# 5     2   2      2           0
# 6     2   3      2          NA
# 7     3   1     12          10
# 8     3   2     22          78
# 9     3   3    100          NA
# 10    4   1      1           1
# 11    4   2      2          26
# 12    4   3     28          NA
# 13    5   1      0           1
# 14    5   2      1          NA
# 15    6   1     20          30
# 16    6   2     50          NA
share|improve this answer
    
Note that this will only work if the data are sorted by obs. –  Ista Feb 28 at 1:17
    
@Ista - good point –  alexwhan Feb 28 at 2:14
    
using plyr I was able to get this to work on this example, but not on my actual data frame. after ordering the actual data frame by observations I try this on my actual data frame, but the command doesn't terminate, it behaves as if it was stuck in an infinite loop. Using subset I reduced the my actual data frame to one with 9277 rows of 20 variables, so I would expect this to run at the most in the tens of minutes. Would these having extra columns some how complicate things? –  user6179 Feb 28 at 5:21
    
plyr is not really fast with big datasets - give dplyr a go. How about the other solution? –  alexwhan Feb 28 at 5:31
    
I've gotten the other solution to work, with Amount. I am currently trying to adapt it so it will work with difftime(). But, I'll try dplyr as well, Thanks for the help. –  user6179 Feb 28 at 15:19

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