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I need to make dummies for all weaks from 2000-2020 and think of using a for loop. My data looks like this

df <- data.frame( Time = c("2000W01","2000W02", "2000W03", "2000W04"
                    ,"2001W01","2001W02", "2001W03", "2001W04",
                    "2002W01","2002W02", "2002W03", "2002W04"),
                   Total = c(rep(3,12)))

df
    Time Total
1  2000W01     3
2  2000W02     3
3  2000W03     3
4  2000W04     3
5  2001W01     3
6  2001W02     3
7  2001W03     3
8  2001W04     3
9  2002W01     3
10 2002W02     3
11 2002W03     3
12 2002W04     3

I want to make a dummy variable (0 or 1) depending on which week of the year it is

    df <- data.frame( Time = c("2000W01","2000W02", "2000W03", "2000W04"
                        ,"2001W01","2001W02", "2001W03", "2001W04",
                        "2002W01","2002W02", "2002W03", "2002W04"),
                       Total = c(rep(3,12)),
             spring = c(1,0,0,0,1,0,0,0,1,0,0,0),
             summer = c(0,1,0,0,0,1,0,0,0,1,0,0),
             autumn = c(0,0,1,0,0,0,1,0,0,0,1,0),
             winter = c(0,0,0,1,0,0,0,1,0,0,0,1))




       Time Total spring summer autumn winter
1  2000W01     3      1      0      0      0
2  2000W02     3      0      1      0      0
3  2000W03     3      0      0      1      0
4  2000W04     3      0      0      0      1
5  2001W01     3      1      0      0      0
6  2001W02     3      0      1      0      0
7  2001W03     3      0      0      1      0
8  2001W04     3      0      0      0      1
9  2002W01     3      1      0      0      0
10 2002W02     3      0      1      0      0
11 2002W03     3      0      0      1      0
12 2002W04     3      0      0      0      1

How can I do this for a large dataset?

0

You can use case_when to assign seasons and cast the data to wide format.

library(dplyr)
library(tidyr)

df %>%
  mutate(season = case_when(grepl('W01', Time) ~ 'spring', 
                            grepl('W02', Time) ~ 'summer', 
                            grepl('W03', Time) ~ 'autumn', 
                            grepl('W04', Time) ~ 'winter')) %>%
  pivot_wider(names_from = season, values_from = season, 
              values_fn = length, values_fill = 0)

#   Time    Total spring summer autumn winter
#   <chr>   <dbl>  <int>  <int>  <int>  <int>
# 1 2000W01     3      1      0      0      0
# 2 2000W02     3      0      1      0      0
# 3 2000W03     3      0      0      1      0
# 4 2000W04     3      0      0      0      1
# 5 2001W01     3      1      0      0      0
# 6 2001W02     3      0      1      0      0
# 7 2001W03     3      0      0      1      0
# 8 2001W04     3      0      0      0      1
# 9 2002W01     3      1      0      0      0
#10 2002W02     3      0      1      0      0
#11 2002W03     3      0      0      1      0
#12 2002W04     3      0      0      0      1
11
  • What if I have 52 weeks and want W48-W08 (12 months) as winter and same for summer, autum and spring? Can I just use grepl("W01|W02|W03") and so on? – Emil Krabbe May 4 at 11:49
  • Yes, you can do that. Or another option is to separate year and week information and then do something like Week %in% c('W01', 'W02'...) ~ 'spring' – Ronak Shah May 4 at 11:53
  • is there a difference between "W01" and 'W01' ? – Emil Krabbe May 4 at 11:55
  • No..there is no difference. – Ronak Shah May 4 at 11:56
  • I am trying to do the same with months, the code runs but I only get january. I don't want to make a new post but I can show my code. Its right here – Emil Krabbe May 4 at 13:24
1

You could use a look-up vector to get the specific naming and pivot_wider:

library(stringr)
library(dplyr)

lookup <- c("Spring", "Summer", "Autumn", "Winter")
names(lookup) <- 1:4
df %>%
    mutate(week = lookup[stringr::str_sub(Time, start = -1)],
           v = 1) %>%
    pivot_wider(id_cols = c(Time, Total), 
                names_from = week, 
                values_from = v,
                values_fill = 0)

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