# R: calculating the change in a value from one observation to the next within a data frame with cases and observations

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.

-

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
``````
-
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
``````
-
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