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I want to add variables from dat2:

          concreteness familiarity typicality
amoeba            3.60        1.30       1.71
bacterium         3.82        3.48       2.13
leech             5.71        1.83       4.50

To dat1:

    ID  variable value
1    1    amoeba     0
2    2    amoeba     0
3    3    amoeba    NA
251  1 bacterium     0
252  2 bacterium     0
253  3 bacterium     0
501  1     leech     1
502  2     leech     1
503  3     leech     0

Giving the following output:

    X ID  variable value concreteness familiarity typicality
1   1  1    amoeba     0         3.60        1.30       1.71
2   2  2    amoeba     0         3.60        1.30       1.71
3   3  3    amoeba    NA         3.60        1.30       1.71
4 251  1 bacterium     0         3.82        3.48       2.13
5 252  2 bacterium     0         3.82        3.48       2.13
6 253  3 bacterium     0         3.82        3.48       2.13
7 501  1     leech     1         5.71        1.83       4.50
8 502  2     leech     1         5.71        1.83       4.50
9 503  3     leech     0         5.71        1.83       4.50

As you can see the info from dat1 has to be replicated over several rows in dat2.

This was my failed attempt:

dat3 <- merge(dat1, dat2, by=intersect(dat1$variable(dat1), dat2$row.names(dat2)))

Givng the following error:

Error in as.vector(y) : attempt to apply non-function

Please find replicate examples here:

dat1:

structure(list(ID = c(1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L), variable = structure(c(1L, 
1L, 1L, 2L, 2L, 2L, 3L, 3L, 3L), .Label = c("amoeba", "bacterium", 
"leech", "centipede", "lizard", "tapeworm", "head lice", "maggot", 
"ant", "moth", "mosquito", "earthworm", "caterpillar", "scorpion", 
"snail", "spider", "grasshopper", "dust mite", "tarantula", "termite", 
"bat", "wasp", "silkworm"), class = "factor"), value = c(0L, 
0L, NA, 0L, 0L, 0L, 1L, 1L, 0L)), .Names = c("ID", "variable", 
"value"), row.names = c(1L, 2L, 3L, 251L, 252L, 253L, 501L, 502L, 
503L), class = "data.frame")

dat2:

structure(list(concreteness = c(3.6, 3.82, 5.71), familiarity = c(1.3, 
3.48, 1.83), typicality = c(1.71, 2.13, 4.5)), .Names = c("concreteness", 
"familiarity", "typicality"), row.names = c("amoeba", "bacterium", 
"leech"), class = "data.frame")
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3 Answers

up vote 8 down vote accepted

You could add a join variable to dat2 than using merge:

dat2$variable <- rownames(dat2)
merge(dat1, dat2)
   variable ID value concreteness familiarity typicality
1    amoeba  1     0         3.60        1.30       1.71
2    amoeba  2     0         3.60        1.30       1.71
3    amoeba  3    NA         3.60        1.30       1.71
4 bacterium  1     0         3.82        3.48       2.13
5 bacterium  2     0         3.82        3.48       2.13
6 bacterium  3     0         3.82        3.48       2.13
7     leech  1     1         5.71        1.83       4.50
8     leech  2     1         5.71        1.83       4.50
9     leech  3     0         5.71        1.83       4.50
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This answer works with the sample data shown but would drop all unmatched rows in dat1 if there were any. –  G. Grothendieck Dec 31 '12 at 15:48
    
@G.Grothendieck good catch!! need to add all.x =T. –  agstudy Dec 31 '12 at 15:54
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Nothing wrong with @agstudy's answer, but you can do it without actually modifying dat2 by creating an anonymous temporary. Adding X is similar:

> merge(cbind(dat1, X=rownames(dat1)), cbind(dat2, variable=rownames(dat2)))
   variable ID value   X concreteness familiarity typicality
1    amoeba  1     0   1         3.60        1.30       1.71
2    amoeba  2     0   2         3.60        1.30       1.71
3    amoeba  3    NA   3         3.60        1.30       1.71
4 bacterium  1     0 251         3.82        3.48       2.13
5 bacterium  2     0 252         3.82        3.48       2.13
6 bacterium  3     0 253         3.82        3.48       2.13
7     leech  1     1 501         5.71        1.83       4.50
8     leech  2     1 502         5.71        1.83       4.50
9     leech  3     0 503         5.71        1.83       4.50
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Try this:

merge(dat1, dat2, by.x = 2, by.y = 0, all.x = TRUE)

This assumes that if there are any rows in dat1 that are unmatched then the dat2 columns in the result should be filled with NA and if there are unmatched values in dat2 then they are disregarded. For example:

dat2a <- dat2
rownames(2a)[3] <- "elephant"
# the above still works:
merge(dat1, dat2a, by.x = 2, by.y = 0, all.x = TRUE)

The above is known as a left join in SQL and can be done like this in sqldf (ignore the warning):

library(sqldf)
sqldf("select * 
         from dat1 left join dat2 
         on dat1.variable = dat2.row_names", 
       row.names = TRUE)
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