I want to create several columns with a ifelse()-condition. Here is my example-code:
df <- tibble(
date = lubridate::today() +0:9,
return= c(1,2.5,2,3,5,6.5,1,9,3,2))
And now I want to add new columns with ascending conditions (from 1 to 8). The first column should only contain values from the "return"-column, which are higher than 1, the second column should only contain values, which are higher than 2, and so on...
I can calculate each column with a mutate() function:
df <- df %>% mutate( `return>1`= ifelse(return > 1, return, NA))
df <- df %>% mutate( `return>2`= ifelse(return > 2, return, NA))
df <- df %>% mutate( `return>3`= ifelse(return > 3, return, NA))
df <- df %>% mutate( `return>4`= ifelse(return > 4, return, NA))
df <- df %>% mutate( `return>5`= ifelse(return > 5, return, NA))
df <- df %>% mutate( `return>6`= ifelse(return > 6, return, NA))
df <- df %>% mutate( `return>7`= ifelse(return > 7, return, NA))
df <- df %>% mutate( `return>8`= ifelse(return > 8, return, NA))
> head(df)
# A tibble: 6 x 10
date return `return>1` `return>2` `return>3` `return>4` `return>5` `return>6` `return>7` `return>8`
<date> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
1 2019-03-08 1 NA NA NA NA NA NA NA NA
2 2019-03-09 2.5 2.5 2.5 NA NA NA NA NA NA
3 2019-03-10 2 2 NA NA NA NA NA NA NA
4 2019-03-11 3 3 3 NA NA NA NA NA NA
5 2019-03-12 5 5 5 5 5 NA NA NA NA
6 2019-03-13 6.5 6.5 6.5 6.5 6.5 6.5 6.5 NA NA
Is there an easier way to create all these columns and reduce all this code? Maybe with a map_function? And is there a way to automatically name the new columns?