# Count recalls from time data

I have a data frame containing the following information:

``````ID    ATTRIBUTE    START    END
``````

I want to count recalls per `ID`. A recall occurs if

``````ID.i == ID.(-i)
ATTRIBUTE.i == ATTRIBUTE.(-i)
END.i <= START.(-i) - 100
``````

where `(-i) := (j != i)`

Can you help me?

Thank you!

Sorry for not providing data earlier - here is some:

``````ID    ATTRIBUTE    START        END
1     10           2000-01-01   2000-01-30
1     10           2000-03-01   2000-04-30
2     20           2000-01-01   2000-01-30
2     21           2000-03-01   2000-04-30
3     30           2000-01-01   2000-01-30
3     30           2001-01-01   2000-01-30
4     40           2000-01-01   2000-01-30
4     40           2000-03-01   2000-04-30
4     50           2000-06-01   2000-06-30
4     40           2000-07-01   2000-10-30
4     40           2001-01-01   2001-01-30
``````

``````ID    ATTRIBUTE    START        END          COUNT
1     10           2000-01-01   2000-01-30   2
1     10           2000-03-01   2000-04-30   2
2     20           2000-01-01   2000-01-30   1
2     21           2000-03-01   2000-04-30   1
3     30           2000-01-01   2000-01-30   1
3     30           2001-01-01   2000-01-30   1
4     40           2000-01-01   2000-01-30   4
4     40           2000-03-01   2000-04-30   4
4     41           2000-06-01   2000-06-30   1
4     40           2000-07-01   2000-10-30   4
4     40           2001-01-01   2001-01-30   4
``````

(did it by hand - hope there are no mistakes)

-
By `.1` and `.2` do you mean a comparison of row `i` with `i+1`. I.e. for adjacent rows, if the `ID` and `ATTRIBUTE` match and difference between END and subsequent START is less than 100? – Gavin Simpson Jul 28 '11 at 16:05
thanks for your answer. I don't necessarily mean 2 = i+1 but just any other row. I'll correct this with -i notation – speendo Jul 28 '11 at 16:16
Still waiting for sample data for testing. – 42- Jul 28 '11 at 16:37
Now that we have data, can you explain why the COUNT for ID==1 is 2? – 42- Jul 28 '11 at 18:57

Something along these lines. Untested in absence of sample data:

``````aggregate(df, df\$ID, df\$ATTRIBUTE,
FUN= function(x)  sum( sapply(1:(nrow(x)-1),
function(n)x\$END[n] <= x\$START[n+1] -100) ) )
``````

After the edit of the question I still think there may be potential for the code above if the argument dataframe is first sorted by START within ID and ATTRIBUTE:

``````aggregate(df[ order(df\$ID, DF\$ATTRIBUTE, df\$START), ]
df\$ID, df\$ATTRIBUTE,
FUN= function(x)  sum( sapply(1:(nrow(x)-1),
function(n)x\$END[n] <= x\$START[n+1] -100) ) )
``````
-

Your use of `==` and `<=` doesn't make much sense, since the value on the left is a single value, but the value on the right is a vector. I'm guessing that what you want is to test if `ID` matches any other `ID`. For this, you can use

``````with(your_data, ID[i] %in% ID[-i])
``````

To save you looping though, I suggest picking up duplicate `ID`s with the `duplicate` function. E.g.,

``````bad_ID <- duplicated(your_data\$ID)
``````

The logic is even more ambiguous for the third condition. I'm (wildly) guessing that you want the value of `END` to be less than all the other values of `START` minus 100.

We'll have to loop for this condition.

The complete logic is then

``````is_recall <- function(data)
{