# How to recode dataset based on the values?

I have a big dataset with its format being similar to the followings:

``````names <- c('s1','s2','s3', 's4', 's5','s6', 's7', 's8','s9')
metals <- c(4.2, 5.3, 5.4,6, 7,8.5,0, 10.1,11)
plastics <- c(5.1, 0, 2.4,6.1, 7.7,5.5,1.99, 0 ,2.5)
grade<- c("AA", "AB", "AB", "AB", "AC" , "AB", NA , NA, NA)
my_df <- data.frame(names, metals, plastics, grade )
``````

I need to recode each column For numeric columns I need to assign 1 where the value is greater than 0 and for the "grade" columns lets assume I want AA=1, AB=2, AC=3. what is the most efficient way to do so?

Thanks!

Not sure if this one is the most efficient one, but we can use `recode` in `car` package for the character column.

``````my_df\$metals <- ifelse (my_df\$metals > 0, 1 , 0)

my_df\$plastics <- ifelse (my_df\$plastics > 0, 1 , 0)

library(car)
``````

Output

``````names metals plastics grade
1    s1      1        1     1
2    s2      1        0     2
3    s3      1        1     2
4    s4      1        1     2
5    s5      1        1     3
6    s6      1        1     2
7    s7      0        1  <NA>
8    s8      1        0  <NA>
9    s9      1        1  <NA>
``````
• For your second part, you could also just overwrite the levels - `levels(my_df\$grade) <- c(1,2,3)` – thelatemail Oct 20 '16 at 1:08
• @ZheyuanLi - probably preferable to keep it as numbers, so yeah, good point. Also, `c(1,2,3)[my_df\$grade]` – thelatemail Oct 20 '16 at 1:10
• Can I do all at once if I had lots of numeric columns and the coding patterns were similar for all? – Jack Oct 20 '16 at 1:15
• @Jack - see Osssan's answer below and my comment. – thelatemail Oct 20 '16 at 1:16
• We can use package car again my_df\$plastic <- with(my_df, recode(plastic, "0:3=1; 3:6=2; 6:9=3, else=4")) – MFR Oct 20 '16 at 1:36

As always in R, there are a million ways to do even the simplest task. Here's 2 more:

``````numvars <- sapply(my_df, is.numeric)
my_df[numvars] <- lapply(my_df[numvars], findInterval, 1)

#newvals                    #oldvals

#1    s1      1        1     1
#2    s2      1        0     2
#3    s3      1        1     2
#4    s4      1        1     2
#5    s5      1        1     3
#6    s6      1        1     2
#7    s7      0        1    NA
#8    s8      1        0    NA
#9    s9      1        1    NA
``````

Using `apply` for numeric columns and `match` for character column

Edited as per@thelatemail's comments to avoid intermediate matrix coercion

``````my_df[,sapply(my_df,is.numeric)] = lapply(my_df[,sapply(my_df,is.numeric)],function(x) ifelse(x>0,1,0))

my_df
#1    s1      1        1     1
#2    s2      1        0     2
#3    s3      1        1     2
#4    s4      1        1     2
#5    s5      1        1     3
#6    s6      1        1     2
#7    s7      0        1    NA
#8    s8      1        0    NA
#9    s9      1        1    NA
``````

There will be other solutions using data.table,dplyr soon. You could use `microbenchmark` to choose the best solution

• Hint - use `lapply` instead of `apply` - `my_df[,sapply(my_df,is.numeric)] <- lapply(my_df[,sapply(my_df,is.numeric)], FUN=function(x) ifelse(x>0,1,0))` it will avoid coercion to a matrix. – thelatemail Oct 20 '16 at 1:14
• Thanks, makes sense. Updated the answer. – noTyme Oct 20 '16 at 1:27

Going off of @MFR's answer, here are two ways to do it:

``````NumColsToReplace = c("metals", "plastics")
my_df[NumColsToReplace] = ifelse(my_df[NumColsToReplace] > 0, 1, 0)
``````

This allows you to pre-specify the columns you want to replace without copying the second line a bunch of times.

There is also another more efficient way using `lapply` and `replace`:

``````my_df[NumColsToReplace] = lapply(my_df[NumColsToReplace],
function(x) replace(x, x>0, 1))
``````

This may be more typing, but it is two times as fast (or more) as the first method. Below are some benchmarking:

``````Unit: microseconds
expr      min
lapply(my_df[NumColsToReplace], function(x) replace(x, x > 0,      1))     23.949
ifelse(my_df[NumColsToReplace] > 0, 1, 0) 59.445
lq     mean median     uq     max neval
26.515 29.92362 28.654 30.364  57.306   100
62.438 68.84436 63.721 73.129 159.515   100
``````

So depending on how large your dataframe is. You way want to consider the second method.

`levels(my_df\$grade) <- c(1,2,3)` to recode grade mentioned by @thelatemail seems to be the most efficient.