80

In R, I have an operation which creates some Inf values when I transform a dataframe.

I would like to turn these Inf values into NA values. The code I have is slow for large data, is there a faster way of doing this?

Say I have the following dataframe:

dat <- data.frame(a=c(1, Inf), b=c(Inf, 3), d=c("a","b"))

The following works in a single case:

 dat[,1][is.infinite(dat[,1])] = NA

So I generalized it with following loop

cf_DFinf2NA <- function(x)
{
    for (i in 1:ncol(x)){
          x[,i][is.infinite(x[,i])] = NA
    }
    return(x)
}

But I don't think that this is really using the power of R.

99

Option 1

Use the fact that a data.frame is a list of columns, then use do.call to recreate a data.frame.

do.call(data.frame,lapply(DT, function(x) replace(x, is.infinite(x),NA)))

Option 2 -- data.table

You could use data.table and set. This avoids some internal copying.

DT <- data.table(dat)
invisible(lapply(names(DT),function(.name) set(DT, which(is.infinite(DT[[.name]])), j = .name,value =NA)))

Or using column numbers (possibly faster if there are a lot of columns):

for (j in 1:ncol(DT)) set(DT, which(is.infinite(DT[[j]])), j, NA)

Timings

# some `big(ish)` data
dat <- data.frame(a = rep(c(1,Inf), 1e6), b = rep(c(Inf,2), 1e6), 
                  c = rep(c('a','b'),1e6),d = rep(c(1,Inf), 1e6),  
                  e = rep(c(Inf,2), 1e6))
# create data.table
library(data.table)
DT <- data.table(dat)

# replace (@mnel)
system.time(na_dat <- do.call(data.frame,lapply(dat, function(x) replace(x, is.infinite(x),NA))))
## user  system elapsed 
#  0.52    0.01    0.53 

# is.na (@dwin)
system.time(is.na(dat) <- sapply(dat, is.infinite))
# user  system elapsed 
# 32.96    0.07   33.12 

# modified is.na
system.time(is.na(dat) <- do.call(cbind,lapply(dat, is.infinite)))
#  user  system elapsed 
# 1.22    0.38    1.60 


# data.table (@mnel)
system.time(invisible(lapply(names(DT),function(.name) set(DT, which(is.infinite(DT[[.name]])), j = .name,value =NA))))
# user  system elapsed 
# 0.29    0.02    0.31 

data.table is the quickest. Using sapply slows things down noticeably.

  • 1
    Great work on the timings and the modification @mnel. I wish there were an SO way to transfer rep across accounts. I think I will go out and upvotes some other answers of yours. – 42- Aug 30 '12 at 21:09
  • error in do.call(train, lapply(train, function(x) replace(x, is.infinite(x), : 'what' must be a character string or a function – Hack-R Feb 26 '16 at 15:59
52

Use sapply and is.na<-

> dat <- data.frame(a=c(1, Inf), b=c(Inf, 3), d=c("a","b"))
> is.na(dat) <- sapply(dat, is.infinite)
> dat
   a  b d
1  1 NA a
2 NA  3 b

Or you can use (giving credit to @mnel, whose edit this is),

> is.na(dat) <- do.call(cbind,lapply(dat, is.infinite))

which is significantly faster.

  • 4
    The "trick" was in realizing the is.na<- would not accept a result from lapply but would accept one from sapply. – 42- Aug 30 '12 at 1:30
  • I've added some timings. I'm not sure why the is.na<- solution is so much slower. – mnel Aug 30 '12 at 2:37
  • a bit of profiling, and I've edited your solution to be much faster. – mnel Aug 30 '12 at 2:59
15

[<- with mapply is a bit faster than sapply.

> dat[mapply(is.infinite, dat)] <- NA

With mnel's data, the timing is

> system.time(dat[mapply(is.infinite, dat)] <- NA)
#   user  system elapsed 
# 15.281   0.000  13.750 
2

There is very simple solution to this problem in the hablar package:

library(hablar)

dat %>% rationalize()

Which return a data frame with all Inf are converted to NA.

Timings compared to some above solutions. Code: library(hablar) library(data.table)

dat <- data.frame(a = rep(c(1,Inf), 1e6), b = rep(c(Inf,2), 1e6), 
                  c = rep(c('a','b'),1e6),d = rep(c(1,Inf), 1e6),  
                  e = rep(c(Inf,2), 1e6))
DT <- data.table(dat)

system.time(dat[mapply(is.infinite, dat)] <- NA)
system.time(dat[dat==Inf] <- NA)
system.time(invisible(lapply(names(DT),function(.name) set(DT, which(is.infinite(DT[[.name]])), j = .name,value =NA))))
system.time(rationalize(dat))

Result:

> system.time(dat[mapply(is.infinite, dat)] <- NA)
   user  system elapsed 
  0.125   0.039   0.164 
> system.time(dat[dat==Inf] <- NA)
   user  system elapsed 
  0.095   0.010   0.108 
> system.time(invisible(lapply(names(DT),function(.name) set(DT, which(is.infinite(DT[[.name]])), j = .name,value =NA))))
   user  system elapsed 
  0.065   0.002   0.067 
> system.time(rationalize(dat))
   user  system elapsed 
  0.058   0.014   0.072 
> 

Seems like data.table is faster than hablar. But has longer syntax.

  • Timings please? – ricardo Nov 2 '18 at 9:15
  • @ricardo added some timings – davsjob Nov 2 '18 at 9:41
0

Another solution:

    dat <- data.frame(a = rep(c(1,Inf), 1e6), b = rep(c(Inf,2), 1e6), 
                      c = rep(c('a','b'),1e6),d = rep(c(1,Inf), 1e6),  
                      e = rep(c(Inf,2), 1e6))
    system.time(dat[dat==Inf] <- NA)

#   user  system elapsed
#  0.316   0.024   0.340
  • MusTheDataGuy, why would you edit my answer but not add your own solution? There is already "add another answer" button! – Student Oct 10 '18 at 16:32
0

Here is a dplyr/tidyverse solution using the na_if() function:

dat %>% mutate_if(is.numeric, list(~na_if(., Inf)))

Note that this only replaces positive infinity with NA. Need to repeat if negative infinity values also need to be replaced.

dat %>% mutate_if(is.numeric, list(~na_if(., Inf))) %>% 
  mutate_if(is.numeric, list(~na_if(., -Inf)))
-1

You may also use the handy replace_na function: https://tidyr.tidyverse.org/reference/replace_na.html

  • This is a borderline link-only answer. You should expand your answer to include as much information here, and use the link only for reference. – FrankerZ Nov 17 '18 at 1:04

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