25

I have a very large dataframe(df) with approximately 35-45 columns(variables) and rows greater than 300. Some of the rows contains NA,NaN,Inf,-Inf values in single or multiple variables and I have used na.omit(df) to remove rows with NA and NaN but I cant remove rows with Inf and -Inf values using na.omit function.

While searching I came across this thread Remove rows with Inf and NaN in R and used the modified code df[is.finite(df)] but its not removing the rows with Inf and -Inf and also gives this error

Error in is.finite(df) : default method not implemented for type 'list'

EDITED

Remove the entire row even the corresponding one or multiple columns have inf and -inf

25

To remove the rows with +/-Inf I'd suggest the following:

df <- df[!is.infinite(rowSums(df)),]

or, equivalently,

df <- df[is.finite(rowSums(df)),]

The second option (the one with is.finite() and without the negation) removes also rows containing NA values in case that this has not already been done.

  • This won't handle NA's. NA+Inf gives NA and is.infinite(NA) returns FALSE. – nicola Apr 13 '16 at 6:34
  • I thought the OP stated that NA's had already been take care of...? – RHertel Apr 13 '16 at 6:35
  • Nice coding! But calculating the sum is much work. – jogo Apr 13 '16 at 6:35
  • 1
    Guess the second solution is more robust and should handle NA better. – nicola Apr 13 '16 at 6:35
  • 1
    @nicola Thank you for pointing out the difference between !is.infinite() and is.finite(). I learned something today ;-) – RHertel Apr 13 '16 at 6:48
10

The is.finite works on vector and not on data.frame object. So, we can loop through the data.frame using lapply and get only the 'finite' values.

lapply(df, function(x) x[is.finite(x)])

If the number of Inf, -Inf values are different for each column, the above code will have a list with elements having unequal length. So, it may be better to leave it as a list. If we want a data.frame, it should have equal lengths.


If we want to remove rows contain any NA or Inf/-Inf values

df[Reduce(`&`, lapply(df, function(x) !is.na(x)  & is.finite(x))),]

Or a compact option by @nicola

df[Reduce(`&`, lapply(df, is.finite)),]

If we are ready to use a package, a compact option would be NaRV.omit

library(IDPmisc)
NaRV.omit(df)

data

set.seed(24)
df <- as.data.frame(matrix(sample(c(1:5, NA, -Inf, Inf), 
                      20*5, replace=TRUE), ncol=5))
  • The resultend output is not in a dataframe I tried like this dim(df) 330 40 df2<-lapply(df, function(x) x[is.finite(x)]) dim(df2) NULL . I want to remove the entire row even one of the columns contains inf, -inf value – Eka Apr 13 '16 at 6:31
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    Yes, I removed the comment. Don't think the !is.na is needed, since is.finite(NA) returns FALSE. – nicola Apr 13 '16 at 6:33
4

To keep the rows without Inf we can do:

df[apply(df, 1, function(x) all(is.finite(x))), ]

Also NAs are handled by this because of:
a rowindex with value NA will remove this row in the result.

Also rows with NaN are not in the result.

set.seed(24)
df <- as.data.frame(matrix(sample(c(0:9, NA, -Inf, Inf, NaN),  20*5, replace=TRUE), ncol=5))
df2 <- df[apply(df, 1, function(x) all(is.finite(x))), ]

Here are the results of the different is.~-functions:

x <- c(42, NA, NaN, Inf)
is.finite(x)
# [1]  TRUE FALSE FALSE FALSE
is.na(x)
# [1] FALSE  TRUE  TRUE FALSE
is.nan(x)
# [1] FALSE FALSE  TRUE FALSE
4

Depending on the data, there are a couple options using scoped variants of dplyr::filter() and is.finite() or is.infinite() that might be useful:

library(dplyr)

# sample data
df <- data_frame(a = c(1, 2, 3, NA), b = c(5, Inf, 8, 8), c = c(9, 10, Inf, 11), d = c('a', 'b', 'c', 'd'))

# across all columns:
df %>% 
  filter_all(all_vars(!is.infinite(.)))

# note that is.finite() does not work with NA or strings:
df %>% 
  filter_all(all_vars(is.finite(.)))

# checking only numeric columns:
df %>% 
  filter_if(~is.numeric(.), all_vars(!is.infinite(.)))

# checking only select columns, in this case a through c:
df %>% 
  filter_at(vars(a:c), all_vars(!is.infinite(.)))
0

I had this problem and none of the above solutions worked for me. I used the following to remove rows with +/-Inf in columns 15 and 16 of my dataframe.

d<-subset(c, c[,15:16]!="-Inf") 
e<-subset(d, d[,15:16]!="Inf")

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