# How to match two data.frames with an inexact matching identifier (one identifier has to be in the range of the other)

I have the following matching problem: I have two data.frames, one with an observation every month (per company ID), and one with an observation every quarter (per company ID; note that quarter means fiscal quarter; therefore 1Q = Jan, Feb, Mar is not necessarily correct and also, a fiscal quarter is not necessarily 3 month long).

For every month and company, I want to get the correct value of that quarter. Consequently, several months have the same value for one quarter. As an example see the code below:

``````monthlyData <- data.frame(ID = rep(c("A", "B"), each = 5),
Month = rep(1:5, times = 2),
MonValue = 1:10)
monthlyData
ID Month MonValue
1   A     1        1
2   A     2        2
3   A     3        3
4   A     4        4
5   A     5        5
6   B     1        6
7   B     2        7
8   B     3        8
9   B     4        9
10  B     5       10

#Quarterly data, i.e. the value of every quarter has to be matched to several months in d1
#However, I want to match fiscal quarters, which means that one quarter is not necessarily 3 month long
qtrData <- data.frame(ID = rep(c("A", "B"), each = 2),
startMonth = c(1, 4, 1, 3),
endMonth   = c(3, 5, 2, 5),
QTRValue   = 1:4)
qtrData
ID startMonth endMonth QTRValue
1  A          1        3        1
2  A          4        5        2
3  B          1        2        3
4  B          3        5        4

#Desired output
ID Month MonValue QTRValue
1   A     1        1        1
2   A     2        2        1
3   A     3        3        1
4   A     4        4        2
5   A     5        5        2
6   B     1        6        3
7   B     2        7        3
8   B     3        8        4
9   B     4        9        4
10  B     5       10        4
``````

Note: This question was posted on R-help months ago, but I didn't get any answer then and found a solution myself (see R-help). Now, however, I posted a question on stackoverflow where I have a question regarding the `data.table` where this problem was mentioned as well and there, Andrie asked me to post this question again because he apparently has a good solution for it (see Question on SO)

UPDATE: See Matthew Dowle's comment: how does the real data look?

This data is a more realistic one. I added a few rows, but the only main part that changed is column `endMonth` in `qtrData`. More precisely, the `startMonth` is not necessarily the `endMonth` of the previous quarter plus one month anymore. Therefore, using the `roll` option, I think that you need another line of code (if not, you get 20 rows back, but with Andrie's solution, which is the desired one, you get 17 rows back). Then there is no performance difference anymore, if I don't miss anything here.

``````monthlyData_new <- data.table(ID = rep(c("A", "B"), each = 10),
Month = rep(1:10, times = 2),
MonValue = 1:20)

qtrData_new <- data.table(ID = rep(c("A", "B"), each = 3),
startMonth = c(1, 4, 7, 1, 3, 8),
endMonth   = c(3, 5, 10, 2, 5, 10),
QTRValue   = 1:6)

setkey(qtrData_new, ID)
setkey(monthlyData_new, ID)

qtrData1 <- qtrData_new
setkey(qtrData1, ID, startMonth)
monthlyData1 <- monthlyData_new
setkey(monthlyData1, ID, Month)

withTable1 <- function(){
xx <- qtrData1[monthlyData1, roll=TRUE]
xx <- xx[startMonth <= endMonth]

}

withTable2 <- function(){
yy <- monthlyData_new[qtrData_new][Month >= startMonth & Month <= endMonth]

}

benchmark(withTable1, withTable2, replications=1e6)
test replications elapsed relative user.self sys.self user.child sys.child
1 withTable1      1000000   4.244 1.028599     4.232    0.008          0         0
2 withTable2      1000000   4.126 1.000000     4.096    0.028          0         0
``````
-
I never said I had a good solution. You should judge that for yourself :-) –  Andrie Nov 4 '11 at 15:12
I'm honest with you, @Andrie, that's not a good solution...it's an awesome one! –  Christoph_J Nov 4 '11 at 15:32
@Andrie Just on the benchmark (from Andrie), that repeats a very small operation 1 million times. All that's timing is tons of call overhead. You need to construct a large table and compare the times of a single run of each method (the lowest of 3 runs, usually). –  Matt Dowle Nov 5 '11 at 0:48
@MatthewDowle OK, thanks for looking at that. I will adjust my code accordingly. –  Christoph_J Nov 5 '11 at 8:55

Here are two solutions, using Base R and `data.table`. Since the `data.table` solution is about 30% faster than base R, and also much easier to read, I recommend using `data.table` for this.

# Base R

Since you expressed a wish to have this efficient, I use `vapply`:

``````matchData <- function(id, month, data=d2){
vapply(seq_along(id),
function(i)which(
id[i]==data\$ID &
month[i] >= data\$startMonth &
month[i] <= data\$endMonth),
FUN.VALUE=1,
USE.NAMES=FALSE
)
}

within(monthlyData,
Value <- qtrData\$QTRValue[matchData(
monthlyData\$ID, monthlyData\$Month, qtrData)]
)

ID Month MonValue Value
1   A     1        1     1
2   A     2        2     1
3   A     3        3     1
4   A     4        4     2
5   A     5        5     2
6   B     1        6     3
7   B     2        7     3
8   B     3        8     4
9   B     4        9     4
10  B     5       10     4
``````

# data.table

And also demonstrating how to do this using `data.table`:

``````mD <- data.table(monthlyData, key="ID")
qD <- data.table(qtrData, key="ID")
mD[qD][Month>=startMonth & Month<=endMonth]

ID Month MonValue startMonth endMonth QTRValue
[1,]  A     1        1          1        3        1
[2,]  A     2        2          1        3        1
[3,]  A     3        3          1        3        1
[4,]  A     4        4          4        5        2
[5,]  A     5        5          4        5        2
[6,]  B     1        6          1        2        3
[7,]  B     2        7          1        2        3
[8,]  B     3        8          3        5        4
[9,]  B     4        9          3        5        4
[10,]  B     5       10          3        5        4
``````

# Benchmark

I was curious how these two approaches compare:

``````library(rbenchmark)

withBase <- function(){
xx <- within(monthlyData,
Value <- qtrData\$QTRValue[matchData(monthlyData\$ID, monthlyData\$Month, qtrData)])

}

withTable <- function(){
yy <- mD[qD][Month>=startMonth & Month<=endMonth]

}

benchmark(withBase, withTable, replications=1e6)

test replications elapsed relative user.self sys.self user.child
1  withBase      1000000   10.09 1.296915      7.65     0.21         NA
2 withTable      1000000    7.78 1.000000      6.38     0.16         NA
``````
-
That's a very very slow approach in `data.table` ;) `roll=TRUE` is the ticket here. –  Matt Dowle Nov 4 '11 at 15:52
@MatthewDowle You'll have to demonstrate that, please. –  Andrie Nov 4 '11 at 15:53
Ok, added as answer. –  Matt Dowle Nov 4 '11 at 16:35

Try this :

``````mD = data.table(monthlyData, key="ID,Month")
qD = data.table(qtrData,key="ID,startMonth")
qD[mD,roll=TRUE]
ID startMonth endMonth QTRValue MonValue
[1,]  A          1        3        1        1
[2,]  A          2        3        1        2
[3,]  A          3        3        1        3
[4,]  A          4        5        2        4
[5,]  A          5        5        2        5
[6,]  B          1        2        3        6
[7,]  B          2        2        3        7
[8,]  B          3        5        4        8
[9,]  B          4        5        4        9
[10,]  B          5        5        4       10
``````

That should be much faster.

EDIT : Answering the follow-up edit in question. One way is use NA to store where the missing months are. I find it easier to look at one time series column (irregular with gaps and NA), than two making a series of ranges.

``````> mD <- data.table(ID = rep(c("A", "B"), each = 10),
+                  Month = rep(1:10, times = 2),
+                  MonValue = 1:20,  key="ID,Month")
>
> qD <- data.table(ID = rep(c("A", "B"), each = 4),
+                   Month = c(1,4,6,7, 1,3,6,8),
+                   QtrValue = c(1,2,NA,3, 4,5,NA,6),
+                   key="ID,Month")
>
> mD
ID Month MonValue
[1,]  A     1        1
[2,]  A     2        2
[3,]  A     3        3
[4,]  A     4        4
[5,]  A     5        5
[6,]  A     6        6
[7,]  A     7        7
[8,]  A     8        8
[9,]  A     9        9
[10,]  A    10       10
[11,]  B     1       11
[12,]  B     2       12
[13,]  B     3       13
[14,]  B     4       14
[15,]  B     5       15
[16,]  B     6       16
[17,]  B     7       17
[18,]  B     8       18
[19,]  B     9       19
[20,]  B    10       20
> qD
ID Month QtrValue
[1,]  A     1        1
[2,]  A     4        2
[3,]  A     6       NA     # missing for 1 month  (6)
[4,]  A     7        3
[5,]  B     1        4
[6,]  B     3        5
[7,]  B     6       NA     # missing for 2 months (6 and 7)
[8,]  B     8        6
> qD[mD,roll=TRUE]
ID Month QtrValue MonValue
[1,]  A     1        1        1
[2,]  A     2        1        2
[3,]  A     3        1        3
[4,]  A     4        2        4
[5,]  A     5        2        5
[6,]  A     6       NA        6
[7,]  A     7        3        7
[8,]  A     8        3        8
[9,]  A     9        3        9
[10,]  A    10        3       10
[11,]  B     1        4       11
[12,]  B     2        4       12
[13,]  B     3        5       13
[14,]  B     4        5       14
[15,]  B     5        5       15
[16,]  B     6       NA       16
[17,]  B     7       NA       17
[18,]  B     8        6       18
[19,]  B     9        6       19
[20,]  B    10        6       20
> qD[mD,roll=TRUE][!is.na(QtrValue)]
ID Month QtrValue MonValue
[1,]  A     1        1        1
[2,]  A     2        1        2
[3,]  A     3        1        3
[4,]  A     4        2        4
[5,]  A     5        2        5
[6,]  A     7        3        7
[7,]  A     8        3        8
[8,]  A     9        3        9
[9,]  A    10        3       10
[10,]  B     1        4       11
[11,]  B     2        4       12
[12,]  B     3        5       13
[13,]  B     4        5       14
[14,]  B     5        5       15
[15,]  B     8        6       18
[16,]  B     9        6       19
[17,]  B    10        6       20
``````
-
Thanks @Matthew Dowle, that's a good example for the `role` argument. However, within my real data I can not necessarily guarantee that `startMonth` of this quarter equals `endMonth` plus 1 of the quarter before. Therefore, I would still need a line `qd[startMonth <= endMonth]`. Not sure if this would change something with respect to the performance of both approaches though. –  Christoph_J Nov 4 '11 at 17:41
@Christoph_J Gaps are fine. There isn't a +1 assumption. Try it. See `?data.table` for examples of `roll`. –  Matt Dowle Nov 4 '11 at 18:27
@Christoph_J Or to save confusion, please post a more realistic example data set and I'll see what I can do. –  Matt Dowle Nov 4 '11 at 18:36
+1 I still have no idea why this works, but it's pretty cool. –  Andrie Nov 4 '11 at 19:19
@Christoph_J Great thanks. Hope latest edit gives a few more ideas to throw into the mix. –  Matt Dowle Nov 5 '11 at 1:19