9

I'm using dplyr to replace the value with NA if a condition is met, but it's putting NA in place where it shouldn't be.

dput:

df <- structure(list(id = c("USC00231275", "USC00231275", "USC00231275", 
"USC00231275", "USC00231275", "USC00231275", "USC00231275", "USC00231275", 
"USC00231275", "USC00231275"), element = c("TMAX", "TMIN", "TMAX", 
"TMIN", "TMAX", "TMIN", "TMAX", "TMIN", "TMAX", "TMIN"), year = c(1937, 
1937, 1937, 1937, 1937, 1937, 1937, 1937, 1937, 1937), month = c(5, 
5, 5, 5, 5, 5, 5, 5, 5, 5), day = c(1, 1, 2, 2, 3, 3, 4, 4, 5, 
5), date = structure(c(-11933, -11933, -11932, -11932, -11931, 
-11931, -11930, -11930, -11929, -11929), class = "Date"), value = c(0, 
53.96, 68, 44.96, 62.06, 53.96, 73.04, 53.96, 69.08, 50)), .Names = c("id", 
"element", "year", "month", "day", "date", "value"), row.names = c(NA, 
10L), class = "data.frame")

data.frame (Note: condition is only met on row 1 and 2)

            id element year month day       date value
1  USC00231275    TMAX 1937     5   1 1937-05-01  0.00
2  USC00231275    TMIN 1937     5   1 1937-05-01 53.96
3  USC00231275    TMAX 1937     5   2 1937-05-02 68.00
4  USC00231275    TMIN 1937     5   2 1937-05-02 44.96
5  USC00231275    TMAX 1937     5   3 1937-05-03 62.06
6  USC00231275    TMIN 1937     5   3 1937-05-03 53.96
7  USC00231275    TMAX 1937     5   4 1937-05-04 73.04
8  USC00231275    TMIN 1937     5   4 1937-05-04 53.96
9  USC00231275    TMAX 1937     5   5 1937-05-05 69.08
10 USC00231275    TMIN 1937     5   5 1937-05-05 50.00

dplyr

df %>%
  group_by(date) %>%
  mutate(
    value = if(value[element == 'TMIN'] >= value[element == 'TMAX'])
      as.numeric(NA) else value
  )

            id element  year month   day       date value
         (chr)   (chr) (dbl) (dbl) (dbl)     (date) (dbl)
1  USC00231275    TMAX  1937     5     1 1937-05-01    NA
2  USC00231275    TMIN  1937     5     1 1937-05-01    NA
3  USC00231275    TMAX  1937     5     2 1937-05-02 68.00
4  USC00231275    TMIN  1937     5     2 1937-05-02 44.96
5  USC00231275    TMAX  1937     5     3 1937-05-03    NA
6  USC00231275    TMIN  1937     5     3 1937-05-03    NA
7  USC00231275    TMAX  1937     5     4 1937-05-04 73.04
8  USC00231275    TMIN  1937     5     4 1937-05-04 53.96
9  USC00231275    TMAX  1937     5     5 1937-05-05 69.08
10 USC00231275    TMIN  1937     5     5 1937-05-05 50.00

Notice that the only rows that should change are 1 and 2, but dplyr changed rows 5 and 6 even though the conditions were not met.

12
  • Wow, I stared at this for a bit, try this: z <- df %>% group_by(year,month,day) %>% mutate(test = diff(value)) %>% ungroup %>% mutate(value2 = ifelse(test > 0, NA, as.numeric(value))) This works, but if you remove the ungroup suddenly the NA's are back again... I'm somewhat mystified
    – Shape
    Dec 27 '15 at 23:22
  • @Shape Yes, this was from your previous answer and doesn't seem to work on the original dataset. Very strange I thought. Thanks!
    – Vedda
    Dec 27 '15 at 23:23
  • 1
    it's an issue apparently with using NA as the replacement value, take a look at this: df %>% group_by(year,month,day) %>% mutate(value = if(value[element == 'TMIN'] >= value[element == 'TMAX']) 1 else value) this works. But the NA is causing problems, this sounds like a bug
    – Shape
    Dec 27 '15 at 23:28
  • 1
    I would probably use the Inf approach over 9999, it's going to be exactly like NA, unless you divide
    – Shape
    Dec 27 '15 at 23:34
  • 3
    This issue seems relevant
    – jbaums
    Dec 27 '15 at 23:41
1

The code below should do what you are trying to do

df %>%
  group_by(date) %>%
  mutate(new_value = ifelse( ( (value[element == 'TMIN'] >= value[element == 'TMAX']) & element=='TMIN'), NA, value)) %>%
  ungroup

For the question of whether this is a bug or not, I don't think it is. Looking at just the data for the one year, where TMIN >= TMAX, you have the following

df %>%
  filter(date == '1937-05-01') %>%
  mutate(res = (value[element == 'TMIN'] >= value[element == 'TMAX'])) %>%
  mutate(new_value = ifelse( (res & element=='TMIN'), NA, value))

           id element year month day       date value  res new_value
1 USC00231275    TMAX 1937     5   1 1937-05-01  0.00 TRUE         0
2 USC00231275    TMIN 1937     5   1 1937-05-01 53.96 TRUE        NA

The construct value[element == 'TMIN'] >= value[element == 'TMAX']) will always be true as can be seen in the res column. The code below breaks this down a bit to hopefully clarify (I hope).

### Just looking at one date
> df2 <- df %>% filter(date == '1937-05-01')
> df2
           id element year month day       date value
1 USC00231275    TMAX 1937     5   1 1937-05-01  0.00
2 USC00231275    TMIN 1937     5   1 1937-05-01 53.96

### This comparison will be recycled for every element in the group,
### so it will always be TRUE or always FALSE.
> c(df2$value[df2$element == 'TMIN'], df2$value[df2$element == 'TMAX'])
[1] 53.96  0.00

Since there is one comparison for the entire group, they will always see TRUE or always FALSE.

The code that gives the correct result shows how the comparison can be gotten around.

One possible final solution could be:

df %>%
   group_by(date) %>%
   mutate(value = ifelse( ( (value[element == 'TMIN'] >= value[element == 'TMAX']) & element=='TMIN'), NA, value)) %>%
   ungroup
1
  • So while I agree that ifelse can get around this, the single TRUE or false was the intention of the original code. It has the result of running a single operation for each group, based on 2 lookups, rather than multiple, vectorized comparisons. (This is especially true if your long data has more factors than 'a' and 'b', but you still want to include all the group data). When a single TRUE/FALSE is returned, values are typically multiplied. This is something NA should do as well as any other value.
    – Shape
    Dec 30 '15 at 6:43

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