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I have a simple R question. I have two data frames. The first contains all of my possible years. I assign NA to the second column. The second data frame has only a subset of the possible years, but an actual value for the second column. I want to combine the two data frames. More specifically, I want to match them by year and if the second has the correct year, to replace the NA in the first with the value of the second.

Here is example code.

one <- as.data.frame(matrix(1880:1890, ncol=2, nrow=11))
one[,2] <- NA
two <- data.frame(ncol=2, nrow=3)
two[1,] <- c(1880, "a")
two[2,] <- c(1887, "b")
two[3,] <- c(1889, "c")

I want to get the first row, second column of one to have value "a," the eighth row, second column to be "b," and the tenth row, second column to be "c."

Feel free to make the above code more elegant.

One thing I tried as a preliminary step, but it gave a little weird result was:

one[,1]==two[,1] -> test

But test only contains values 1880 and 1887...

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2  
FYI, both elements of c(1880,"a") are characters, since a vector can only have one class. Merges, as seen below, will work, but maybe you want to keep a consistent class for the year variable. Also, that is not the correct syntax for making a data.frame (it doesn't take ncol, nrow). –  Frank Oct 3 '13 at 4:04

4 Answers 4

up vote 3 down vote accepted
one[match(two[,1],one[,1]),2]<-two[,2]

That should give you what you are looking for:

> one
     V1   V2
1  1880    a
2  1881 <NA>
3  1882 <NA>
4  1883 <NA>
5  1884 <NA>
6  1885 <NA>
7  1886 <NA>
8  1887    b
9  1888 <NA>
10 1889    c
11 1890 <NA>
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I like to use merge for these types of problems. It's pretty straightforward in my opinion. Check out the help article ?merge

three <- merge(one, two, by.x = 'V1', by.y = 'ncol', all = T)
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Here's one approach (merge is another):

library(qdap)
one[, 2] <- lookup(one[, 1], two)
one

##      V1   V2
## 1  1880    a
## 2  1881 <NA>
## 3  1882 <NA>
## 4  1883 <NA>
## 5  1884 <NA>
## 6  1885 <NA>
## 7  1886 <NA>
## 8  1887    b
## 9  1888 <NA>
## 10 1889    c
## 11 1890 <NA>
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Merge-assigns are fairly straightforward and fast using data.tables. This is how I usually do them:

require(data.table)
DT1 <- data.table(yr=as.character(1880:1890),key='yr')
DT2 <- data.table(read.table(colClasses='character',text='
1880 a
1887 b
1889 c
')) 

Reading the data in in this way is easier (since you don't have to match quotation marks and parentheses) and more readable.

DT1[DT2,myvar:=V2] 

This step does a "join" of the first column of DT2 with the key column of DT1 (see DT1[DT2]), and then copies over V2 from DT2 into a new column in DT1 called "myvar". Type DT1 to see the result.

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