# Numeric comparison during merge in R

Dataframe `d1`:

``````x  y
4 10
6 20
7 30
``````

Dataframe `d2`:

``````x   z
3 100
6 200
9 300
``````

How do I merge `d1` and `d2` by `"x"` where `d1\$x` should be matched against exact match or the next higher number in `d2\$x`. Output should look like:

``````x   y    z
4  10  200 # (4 is matched against next higher value that is 6)
6  20  200 # (6 is matched against 6)
7  30  300 # (7 is matched against next higher value that is 9)
``````

If `merge()` cannot do this, then is there any other way to do this? For loops are painfully slow.

-

Input data:

``````d1 <- data.frame(x=c(4,6,7), y=c(10,20,30))
d2 <- data.frame(x=c(3,6,9), z=c(100,200,300))
``````

You basically wish to extend `d1` by a new column. So let's copy it.

``````d3 <- d1
``````

Next I assume that `d2\$x` is sorted nondecreasingly and that`max(d1\$x) <= max(d2\$x)`.

``````d3\$z <- sapply(d1\$x, function(x) d2\$z[which(x <= d2\$x)[1]])
``````

Which reads: for each `x` in `d1\$x`, get the smallest value from `d2\$x` which is not smaller than `x`.

Under these assumptions, the above may also be written as (& should be a bit faster):

``````d3\$z <- sapply(d1\$x, function(x) d2\$z[which.max(x <= d2\$x)])
``````

In result we get:

``````d3
##   x  y   z
## 1 4 10 200
## 2 6 20 200
## 3 7 30 300
``````

EDIT1: Inspired by @MatthewLundberg's `cut`-based solution, here's another one using `findInterval`:

``````d3\$z <- d2\$z[findInterval(d1\$x, d2\$x+1)+1]
``````

EDIT2: (Benchmark)

Exemplary data:

``````set.seed(123)
d1 <- data.frame(x=sort(sample(1:10000, 1000)), y=sort(sample(1:10000, 1000)))
d2 <- data.frame(x=sort(c(sample(1:10000, 999), 10000)), z=sort(sample(1:10000, 1000)))
``````

Results:

``````microbenchmark::microbenchmark(
{d3 <- d1; d3\$z <- d2\$z[findInterval(d1\$x, d2\$x+1)+1] },
{d3 <- d1; d3\$z <- sapply(d1\$x, function(x) d2\$z[which(x <= d2\$x)[1]]) },
{d3 <- d1; d3\$z <- sapply(d1\$x, function(x) d2\$z[which.max(x <= d2\$x)]) },
{d1\$x2 <- d2\$x[as.numeric(cut(d1\$x, c(-Inf, d2\$x, Inf)))]; merge(d1, d2, by.x='x2', by.y='x')},
{d1a <- d1; setkey(setDT(d1a), x); d2a <- d2; setkey(setDT(d2a), x); d2a[d1a, roll=-Inf] }
)
## Unit: microseconds
##         expr       min            lq    median        uq       max neval
## findInterval   221.102      1357.558  1394.246  1429.767  17810.55   100
## which        66311.738     70619.518 85170.175 87674.762 220613.09   100
## which.max    69832.069     73225.755 83347.842 89549.326 118266.20   100
## cut           8095.411      8347.841  8498.486  8798.226  25531.58   100
## data.table    1668.998      1774.442  1878.028  1954.583  17974.10   100
``````
-

This is pretty straightforward using rolling joins with `data.table`:

``````require(data.table)   ## >= 1.9.2
setkey(setDT(d1), x)  ## convert to data.table, set key for the column to join on
setkey(setDT(d2), x)  ##  same as above

d2[d1, roll=-Inf]

#    x   z  y
# 1: 4 200 10
# 2: 6 200 20
# 3: 7 300 30
``````
-

`cut` can be used to find the appropriate matches in `d2\$x` for the values in `d1\$x`.

The computation to find the matches with `cut` is as follows:

``````as.numeric(cut(d1\$x, c(-Inf, d2\$x, Inf)))
## [1] 2 2 3
``````

These are the values:

``````d2\$x[as.numeric(cut(d1\$x, c(-Inf, d2\$x, Inf)))]
[1] 6 6 9
``````

These can be added to `d1` and the merge performed:

``````d1\$x2 <- d2\$x[as.numeric(cut(d1\$x, c(-Inf, d2\$x, Inf)))]
merge(d1, d2, by.x='x2', by.y='x')
##   x2 x  y   z
## 1  6 4 10 200
## 2  6 6 20 200
## 3  9 7 30 300
``````

The added column may then be removed, if desired.

-
+1 for `cut`. Also, `findInterval` will work similarly, I suppose. – gagolews Jun 7 '14 at 19:12
@gagolews `findInterval` uses intervals that are closed on the left. `cut` gives a choice (closed on the right is default). – Matthew Lundberg Jun 7 '14 at 19:26
`rightmost.closed` ? – gagolews Jun 7 '14 at 19:28
@gagolews That effects only the last interval. – Matthew Lundberg Jun 7 '14 at 19:30
Ah, sure. Thanks – gagolews Jun 7 '14 at 19:35

Try: `sapply(d1\$x,function(y) d2\$z[d2\$x > y][which.min(abs(y - d2\$x[d2\$x > y]))])`

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