6

I have the following data frame, with different row lengths:

myvar <- as.data.frame(rbind(c("Walter","NA","NA","NA","NA"),
                             c("Walter","NA","NA","NA","NA"),
                             c("Walter","Jesse","NA","NA","NA"),
                             c("Gus","Tuco","Mike","NA","NA"), 
                             c("Gus","Mike","Hank","Saul","Flynn")))
ID <- as.factor(c(1:5))   
data.frame(ID,myvar)

ID     V1    V2   V3   V4    V5
 1 Walter    NA   NA   NA    NA
 2 Walter    NA   NA   NA    NA
 3 Walter Jesse   NA   NA    NA
 4    Gus  Tuco Mike   NA    NA
 5    Gus  Mike Hank Saul Flynn

My goal is to switch this data frame into a two column data frame. The first column would be the ID and the other one would be the character name. Note that the ID must be correspondent to the row the character were originally placed. I'm expecting the following result:

ID      V
1  Walter    
2  Walter
3  Walter
3  Jesse
4  Gus
4  Tuco
4  Mike
5  Gus
5  Mike
5  Hank
5  Saul
5  Flynn

I've tried dcast {reshape2} but it doesn't returned what I need. It is noteworthy that my original data frame is quite big. Any tips? Cheers.

3
  • 1
    and dcast is the opposite of what you want, that's for going from long to wide
    – rawr
    Apr 7, 2015 at 3:52
  • 1
    Do NOT use data.frame(cbind(,,,)) or data.frame(rbind). Bad things will happen.
    – IRTFM
    Apr 7, 2015 at 3:55
  • Sorry about the NA as character. My bad. But thank you all for the answers!
    – ALSM
    Apr 7, 2015 at 4:44

5 Answers 5

8

You could use unlist

 res <- subset(data.frame(ID,value=unlist(myvar[-1], 
                              use.names=FALSE)), value!='NA')
 res
 #   ID  value
 #1   1 Walter
 #2   2 Walter
 #3   3 Walter
 #4   4    Gus
 #5   5    Gus
 #6   3  Jesse
 #7   4   Tuco
 #8   5   Mike
 #9   4   Mike
 #10  5   Hank
 #11  5   Saul
 #12  5  Flynn

NOTE: The NAs are 'character' elements in the dataset, it is better to create it without quotes so that it will be real NAs and we can remove it by na.omit, is.na, complete.cases etc.

data

myvar <- data.frame(ID,myvar)
7
myvar <- as.data.frame(rbind(c("Walter","NA","NA","NA","NA"),
                             c("Walter","NA","NA","NA","NA"),
                             c("Walter","Jesse","NA","NA","NA"),
                             c("Gus","Tuco","Mike","NA","NA"), 
                             c("Gus","Mike","Hank","Saul","Flynn")))
ID <- as.factor(c(1:5))   
df <- data.frame(ID, myvar)

Using base reshape. (I'm converting your "NA" character strings to NA which you may not have to do, this is just due to how you created this example)

df[df == 'NA'] <- NA
na.omit(reshape(df, direction = 'long', varying = list(2:6))[, c('ID','V1')])

#     ID     V1
# 1.1  1 Walter
# 2.1  2 Walter
# 3.1  3 Walter
# 4.1  4    Gus
# 5.1  5    Gus
# 3.2  3  Jesse
# 4.2  4   Tuco
# 5.2  5   Mike
# 4.3  4   Mike
# 5.3  5   Hank
# 5.4  5   Saul
# 5.5  5  Flynn

or using reshape2

library('reshape2')
## na.omit(melt(df, id.vars = 'ID')[, c('ID','value')])

## or better yet as ananda suggests:
melt(df, id.vars = 'ID', na.rm = TRUE)[, c('ID','value')]

#    ID  value
# 1   1 Walter
# 2   2 Walter
# 3   3 Walter
# 4   4    Gus
# 5   5    Gus
# 8   3  Jesse
# 9   4   Tuco
# 10  5   Mike
# 14  4   Mike
# 15  5   Hank
# 20  5   Saul
# 25  5  Flynn

you get warnings that the factor levels over the columns are not the same but that's fine.

2
  • 1
    I would have changed the arguments to include stringsAsFactors=FALSE
    – IRTFM
    Apr 7, 2015 at 3:54
  • melt has an na.rm argument, so you should not need to use na.omit. However, because of how the data were created, you need to make them into real NA (which you did). Apr 7, 2015 at 4:10
6

Fix your "NA" so that they are actually NA first:

mydf[mydf == "NA"] <- NA

Using some subsetting to do it all in one fell swoop:

data.frame(ID=mydf$ID[row(mydf[-1])[!is.na(mydf[-1])]], V=mydf[-1][!is.na(mydf[-1])])

#   ID      V
#1   1 Walter
#2   2 Walter
#3   3 Walter
#4   4    Gus
#5   5    Gus
#6   3  Jesse
#7   4   Tuco
#8   5   Mike
#9   4   Mike
#10  5   Hank
#11  5   Saul
#12  5  Flynn

Or much more readable in base R:

sel <- which(!is.na(mydf[-1]), arr.ind=TRUE)
data.frame(ID=mydf$ID[sel[,1]], V=mydf[-1][sel])
5

Using tidyr

library("tidyr")

myvar <- as.data.frame(rbind(c("Walter","NA","NA","NA","NA"),
                             c("Walter","NA","NA","NA","NA"),
                             c("Walter","Jesse","NA","NA","NA"),
                             c("Gus","Tuco","Mike","NA","NA"), 
                             c("Gus","Mike","Hank","Saul","Flynn")))
ID <- as.factor(c(1:5))   

myvar <- data.frame(ID,myvar)

myvar %>% 
    gather(ID, Name, V1:V5 ) %>%
    select(ID, value) %>%
    filter(value != "NA")

If your NAs are coded as NA instead of "NA", then we can in fact use the na.rm = TRUE option in gather. E.g.:

myvar[myvar == "NA"] <- NA
myvar %>% 
    gather(ID, Name, V1:V5, na.rm = TRUE ) %>%
    select(ID, value)

gives

   ID  value
1   1 Walter
2   2 Walter
3   3 Walter
4   4    Gus
5   5    Gus
6   3  Jesse
7   4   Tuco
8   5   Mike
9   4   Mike
10  5   Hank
11  5   Saul
12  5  Flynn
4
  • The key in this solution and @rawr's solutions is that we remove NA's after concatenating the name columns while keeping the row number.
    – Alex
    Apr 7, 2015 at 3:51
  • I keep getting an error: Error in eval(expr, envir, enclos) : object 'value' not found
    – lawyeR
    Apr 14, 2015 at 18:23
  • What is your version of tidyr? There is some problem with new assignment of names in some versions of tidyr, don't run the last select command to see what column names you are left with.
    – Alex
    Apr 14, 2015 at 23:16
  • 1
    now deprecated- use pivot_longer instead
    – tjebo
    Dec 19, 2021 at 12:37
0

Since you are thinking of huge data,

time performance would matter, even sorting afterwards could take forever

Here's my solution. You better be using data.table but here I'll use reshape2

  1. first solution
myvar <- as.data.frame(rbind(c("Walter","NA","NA","NA","NA"),
                             c("Walter","NA","NA","NA","NA"),
                             c("Walter","Jesse","NA","NA","NA"),
                             c("Gus","Tuco","Mike","NA","NA"), 
                             c("Gus","Mike","Hank","Saul","Flynn")))
ID <- as.factor(c(1:5))   

dat = data.frame(ID,myvar)
dat[] <- lapply(dat, function(x) {x[x=="NA"]=NA; x})

str(dat$V5)

library(dplyr)
library(reshape2)

dat2 <- melt(dat, id.vars="ID", measure.vars = paste0("V", 1:5), na.rm=TRUE)
dat2
dat2[, c('ID', 'value')]
  1. second solution needs some preprocessing. for huge data, i would recommend data.table
datB <- t(dat)
datB
colnames(datB) <- datB["ID", ]
datB <- datB[-1,]

melt(datB, measure.vars = 1:5, na.rm=TRUE)[, c('Var2', 'value')]

you do not need sorting afterwards

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