I have a data frame that contains numbers and numbers separated by a "." and I want to change the entries dependent on the "." string. If the entry does not contain a "." the prefix "-" should be added. That's kind of simple using the subsetting or grep functionality. But I also want to replace the entries which contain a "." with the counter of ".".

my example data:

X1      X2 
1       2  
3       4
6       8
5       1.2
3.4     7
1.2.5   9
11      3.4.7

and I would like to have it look like this:

X1      X2 
-1       -2  
-3       -4
-6       -8
-5       1
2        -7
3        -9
-11      4

I have no clue and tried already subsetting, extracting the "." parts to count them. But I can not insert the counter. Thanks for your help.

  • because it's the third and 4th time a "." appears – Miguel123 Nov 11 '16 at 14:18
  • Yes I got it. Look at my answer below – Sotos Nov 11 '16 at 14:19
  • yes, thanks! :) also a nice solution, although I'm not familiar with sapply. And according to your question - how would the code look like if we want to check the numbers of the "."-entry and replace it with the row-number where the combination appeared above? So that means: 1.2. => 1, 3.4 =>2, 1.2.5 => 4, 3.4.7 => 5 ? – Miguel123 Nov 11 '16 at 14:34
  • Here is a link about apply family. I am not sure I understand what you mean with row-number – Sotos Nov 11 '16 at 14:38
  • 1
    @Sotos he means that 1.2 is the combination of X1 and X2 at the row 1, and 3.4.7 is the combination of X1 and X2 at the row5. – timat Nov 11 '16 at 14:46
up vote 2 down vote accepted

Here is an idea via base R,

ind <- rowSums(sapply(df, function(i) cumsum(grepl('\\.', i))))
df[] <- lapply(df[], function(i) ifelse(grepl('\\.', i), ind, paste0('-', i)))

df
#   X1 X2
#1  -1 -2
#2  -3 -4
#3  -6 -8
#4  -5  1
#5   2 -7
#6   3 -9
#7 -11  4

NOTE : I converted df to character,

df[] <- lapply(df[], as.character)

EDIT

Regarding your row numbers request, then this should do it,

ind1 <- apply(df, 1, function(i) paste(sort(i), collapse = '.'))
df2 <- sapply(df, function(i) match(i, ind1))
df[] <- lapply(df[], function(i) ifelse(grepl('\\.', i), 0, paste0('-', i)))
df[!is.na(df2)] <- df2[!is.na(df2)]
df
#   X1 X2
#1  -1 -2
#2  -3 -4
#3  -6 -8
#4  -5  1
#5   2 -7
#6   4 -9
#7 -11  5

If you are planning on doing calculations with this data frame later on, then you should convert to integer, i.e.,

df[] <- lapply(df[], as.integer)

str(df)
#'data.frame':  7 obs. of  2 variables:
# $ X1: int  -1 -3 -6 -5 2 4 -11
# $ X2: int  -2 -4 -8 1 -7 -9 5

Here it is with data.table The idea is to create a counter in an temporary column:

library(data.table)

dt<-data.table(df)
dt$X1 <- as.character(dt$X1 )
dt$X2 <- as.character(dt$X2 )
dt[!grepl(".", dt$X1, fixed=TRUE),X1:=paste("-", X1, sep="") ]
dt[!grepl(".", dt$X2, fixed=TRUE),X2:=paste("-", X2, sep="") ]
dt[grepl(".", dt$X1, fixed=TRUE)|grepl(".", dt$X2, fixed=TRUE), count_point:=as.character(sequence(.N))]
dt[grepl(".", dt$X1, fixed=TRUE),X1:=count_point]
dt[grepl(".", dt$X2, fixed=TRUE),X2:=count_point]
df <- data.frame(dt[, c("X1", "X2"), with = FALSE])

There should be a way to do it in less line, using .SD

  • wow, that works. never thought about a temporary column... – Miguel123 Nov 11 '16 at 14:22

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