I've looked extensively on stack overflow but wasn't able to find anything useful for my desired output.

To illustrate, consider the following example data frame:

      D     X     Y     Z     A     B     C    Total
 1   abc    2     3     4     7     2     1      19

The total corresponds to the sum of each row. For simplicity, let B=19, which is the total. The output I desire is:

    D     X     Y     Z     A     B     C    Total
 1  abc   1     2     3     4     5     2      B
 2  N/A   1/B   2/B   3/B   4/B   5/B   2/B    1

Here, each element in the 1st row is divided by the total number, and this is reflected in the 2nd row. To create a column for total, I used mutate and did this:

df <- df %>% mutate(Total = X + Y + Z + A + B + C)

But I wasn't able to figure out how to create a row where each element is divisible by the Total number.

Any help would be appreciated! I wouldn't mind using mutate or data.table in doing this, as I used data.table to create a big dataframe.

EDIT1: I'm really sorry for not mentioning this, but a column includes some strings. I have editted the above to reflect this.

  • Opps, i'm sorry! It is indeed 1. – ynitSed Oct 12 at 1:16
up vote 1 down vote accepted

Here's a dplyr answer to your question. What you actually want to do might be more complex, but this simple bind_rows, filter, and mutate_all works for the simple provided example.

library(dplyr)
df <- data.frame(x = 2:3, y = 3:4, z = letters[1:2], total = c(0, 19))
bind_rows(
    df,
    filter(df, row_number() == n()) %>%
        mutate_if(is.numeric, funs(. / total))
)

# x         y z total
# 1 2.0000000 3.0000000 a     0
# 2 3.0000000 4.0000000 b    19
# 3 0.1578947 0.2105263 b     1
  • Thanks for this! Like my above comment in the previous post(sorry for not mentioning this), but if a column included strings, this impacts mutate_all and I received this error: Error in mutate_impl(.data, dots) : Evaluation error: non-numeric argument to binary operator. – ynitSed Oct 12 at 1:45
  • 1
    @ynitSed no problem. See the updated example in my solution above. Basically, mutate_if should do the trick then to only operate on numerics. – jmuhlenkamp Oct 12 at 1:49
  • This works. If I had multiple rows and just wanted to perform the calculation for the last row, would this change the code a lot? – ynitSed Oct 12 at 2:02
  • 1
    See the updated answer. – jmuhlenkamp Oct 12 at 2:17
  • Legend, thank you so much! – ynitSed Oct 12 at 2:25

I have added one more row to make the solution more general.

In base R, we can divide the dataframe by the Total column in that row and then rbind it with original dataframe.

new_df <- rbind(df, df/df[, "Total"])
new_df

#           X         Y         Z         A         B          C Total
#1  2.0000000 3.0000000 4.0000000 7.0000000 2.0000000 1.00000000    19
#2  1.0000000 2.0000000 5.0000000 6.0000000 7.0000000 4.00000000    25
#11 0.1052632 0.1578947 0.2105263 0.3684211 0.1052632 0.05263158     1
#21 0.0400000 0.0800000 0.2000000 0.2400000 0.2800000 0.16000000     1

If the order is important and you want to maintain it, then we can just reorder it

rbind(new_df[c(T, F),], new_df[c(F, T),])

#           X         Y         Z         A         B          C Total
#1  2.0000000 3.0000000 4.0000000 7.0000000 2.0000000 1.00000000    19
#11 0.1052632 0.1578947 0.2105263 0.3684211 0.1052632 0.05263158     1
#2  1.0000000 2.0000000 5.0000000 6.0000000 7.0000000 4.00000000    25
#21 0.0400000 0.0800000 0.2000000 0.2400000 0.2800000 0.16000000     1

EDIT

If there are certain columns which are string we can ignore them and use bind_rows instead of rbind as it directly returns NA for non-matching columns.

library(dplyr)
bind_rows(df1, df1[!names(df1) %in% "D"]/df1[, "Total"])

#         X         Y         Z         A         B          C  Total    D
#1 2.0000000 3.0000000 4.0000000 7.0000000 2.0000000 1.00000000    19  abc
#2 1.0000000 2.0000000 5.0000000 6.0000000 7.0000000 4.00000000    25  def
#3 0.1052632 0.1578947 0.2105263 0.3684211 0.1052632 0.05263158     1 <NA>
#4 0.0400000 0.0800000 0.2000000 0.2400000 0.2800000 0.16000000     1 <NA>

data

df <- structure(list(X = c(2, 1), Y = c(3, 2), Z = c(4, 5), A = c(7, 
  6), B = c(2, 7), C = c(1, 4), Total = c(19, 25)), .Names = c("X", 
  "Y", "Z", "A", "B", "C", "Total"), row.names = c("1", "2"), class = "data.frame")

df1 <-structure(list(X = c(2, 1), Y = c(3, 2), Z = c(4, 5), A = c(7, 
6), B = c(2, 7), C = c(1, 4), Total = c(19, 25), D = c("abc", 
"def")), .Names = c("X", "Y", "Z", "A", "B", "C", "Total", "D"
 ), row.names = c("1", "2"), class = "data.frame")
  • Thanks for this Ronak! If a column included some strings, say within the list you also have say, D = c("a", "b") and obviously cant perform the calculation I want, how can I exclude this calculation out for this column? – ynitSed Oct 12 at 1:42
  • 1
    @ynitSed You can remove the D column from calculation by doing df[-columnnumber] if you know the column number of D column or df[!names(df) %in% "D"] – Ronak Shah Oct 12 at 1:49

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