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I have two dataframes with different dimensions,

df1 <- data.frame(names= sample(LETTERS[1:10]), duration=sample(0:100, 10))

>df1
   names duration
1      J       97
2      G       57
3      H       53
4      A       23
5      E      100
6      D       90
7      C       73
8      F       60
9      B       37
10     I       67

df2 <- data.frame(names= LETTERS[1:5], names_new=letters[1:5])

> df2
  names names_new
1     A         a
2     B         b
3     C         c
4     D         d
5     E         e

I want to replace in df1 the values that match df1$names and df2$names but using the df2$names_new. My desired output would be:

> df1
   names duration
1      J       97
2      G       57
3      H       53
4      a       23
5      e      100
6      d       90
7      c       73
8      F       60
9      b       37
10     I       67

This is the code I'm using but I wonder if there is a cleaner way to do it with no so many steps,

df2[,1] <- as.character(df2[,1])
df2[,2] <- as.character(df2[,2])
df1[,1] <- as.character(df1[,1])    

match(df1[,1], df2[,1]) -> id
which(!is.na(id)==TRUE) -> idx
id[!is.na(id)] -> id

df1[idx,1] <- df2[id,2]

Many thanks

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1  
You should set the seed to have a reproducible example.(set.seed(1)) –  agstudy Jun 10 at 17:51

5 Answers 5

up vote 5 down vote accepted

Here's an approach from qdapTools:

library(qdapTools)
df1$names <- df1$names %lc+% df2

The %l+% is a binary operator version of lookup. The left are the terms and the right side is the lookup table. The + means that any noncomparables will revert back to the original. This is a wrapper for the data.table package and is pretty speedy.

Here is the output including set.seed(1) for reproducibility:

set.seed(1)
df1 <- data.frame(names= sample(LETTERS[1:10]), duration=sample(0:100, 10),stringsAsFactors=F)
df2 <- data.frame(names= LETTERS[1:5], names_new=letters[1:5],stringsAsFactors=F)

library(qdapTools)
df1$names <- df1$names %lc+% df2

df1

##    names duration
## 1      c       20
## 2      d       17
## 3      e       68
## 4      G       37
## 5      b       74
## 6      H       47
## 7      I       98
## 8      F       93
## 9      J       35
## 10     a       71
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Extremely slick and fast solution! –  amurphy Nov 23 at 1:37

Are all names in df2 also in df1? And do you intent to keep them as a factor? If so, you might find this solution helpful.

idx <- match(levels(df2$names), levels(df1$names))
levels(df1$names)[idx] <- levels(df2$names_new)
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This works but requires that names and names_new are character and not factor.

set.seed(1)
df1 <- data.frame(names= sample(LETTERS[1:10]), duration=sample(0:100, 10),stringsAsFactors=F)
df2 <- data.frame(names= LETTERS[1:5], names_new=letters[1:5],stringsAsFactors=F)


rownames(df1) <- df1$names
df1[df2$name,]$names <- df2$names_new
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Another option using merge:

transform(merge(df1,df2,all.x=TRUE),
          names=ifelse(is.na(names_new),as.character(names),
                                        as.character(names_new)))
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Another way using match would be (if df1$names and df1$names are characters of course)

df1[match(df2$names, df1$names), "names"] <- df2$names_new
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