I have a tibble called master_table that is 488 rows by 9 variables. The two relevant variables to the problem are wrestler_name and reign_begin. There are multiple repeats of certain wrestler_name values. I want to reduce the rows to only be one instance of each unique wrestler_name value, decided by the earliest reign_begin date value. Sample tibble is linked below:

So, in this slice of the tibble, the end goal would be to have just five rows instead of eleven, and the single Ric Flair row, for example, would have a reign_begin date of 9/17/1981, the earliest of the four Ric Flair reign_begin values.

I thought that group_by would make the most sense, but the more I think about it and try to use it, the more I think it might not be the right path. Here are some things I tried:

  group_by(wrestler_name) %>% 
  tibbletime::filter_time(reign_begin, 'start' ~ 'start') 
#Trying to get it to just filter the first date it finds for each wrestler_name group, but did not work

master_table_2 <- master_table %>% 
  group_by(wrestler_name) %>% 
#I know that this would not work, but its the place I'm basically stuck

edit: Per request, here is the head(master_table), which contains slightly different data, but it still expresses the issue:

1      Ric Flair  NWA World Heavyweight Championship              40            8          69   1991-01-11 1991-03-21
2           Sting NWA World Heavyweight Championship              39            1         188   1990-07-07 1991-01-11
3      Ric Flair  NWA World Heavyweight Championship              38            7         426   1989-05-07 1990-07-07
4 Ricky Steamboat NWA World Heavyweight Championship              37            1          76   1989-02-20 1989-05-07
5      Ric Flair  NWA World Heavyweight Championship              36            6         452   1987-11-26 1989-02-20
6   Ronnie Garvin NWA World Heavyweight Championship              35            1          62   1987-09-25 1987-11-26
                   city_state country
1 East Rutherford, New Jersey     USA
2         Baltimore, Maryland     USA
3        Nashville, Tennessee     USA
4           Chicago, Illinois     USA
5           Chicago, Illinois     USA
6           Detroit, Michigan     USA
  • You have to filter for something: filter(reign_begin == min(reign_begin)), but I don't know if this works with dates.
    – Martin Gal
    Jul 15 '20 at 20:22
  • Hey Martin, I appreciate both thoughts. I tried the filter(reign_begin == min(reign_begin)) suggestion. It halved the numbers of rows, and worked somewhat. It reduced most of the wrestler_name instances down to two instances, but did not get the intended result.
    – wnettles
    Jul 15 '20 at 21:00

The common way to do this for databases involves a join:

earliest <- master_table %>%
  group_by(wrestler_name) %>%
  summarise(reign_begin = min(reign_begin)

master_table_2 <- master_table %>%
  inner_join(earliest, by = c("wrestler_name", "reign_begin"))

No filter is required as an inner join only include overlaps.

The above approach is often required for database because of how they calculate summaries. But as @Martin_Gal suggests R can handle this a different way because it stores the data in memory.

master_table_2 <- master_table %>%
  group_by(wrestler_name) %>%
  filter(reign_begin == min(reign_begin))

You may also find having the lubridate package installed assist for working with dates.

  • Hey Simon, Thanks for the post. I'm getting some weird returns. For earliest <- master_table %>% group_by(wrestler_name) %>% summarise(reign_begin = min(reign_begin)) I'm getting a return of summarise()` ungrouping output (override with `.groups` argument)
    – wnettles
    Jul 16 '20 at 1:29
  • For master_table_2 <- master_table %>% group_by(wrestler_name) %>% filter(reign_begin == min(reign_begin)) The tibble that returns still has duplicate wrestler_names.
    – wnettles
    Jul 16 '20 at 1:30
  • Do you have any thought on alternative approaches or tweaks? Thanks!
    – wnettles
    Jul 16 '20 at 1:31
  • The first message ungrouping output is not a concern. It just means that your output is no longer grouped following the summarise command. You can use summarise(reign_begin = min(reign_begin), .groups = "drop") to get rid of this warning (it is not an error, just a warning). It just means your'll have to call group_by again before your next summary - which is good practice anyway.
    – Simon.S.A.
    Jul 16 '20 at 5:00
  • Regarding the duplicate wrestler names, there could be minor differences in the input text, e.g. "Mr X" is different from "Mr X." and "Mr X " (last one has a trailing space). To check this take a look at the output from master_table %>% select(wrestler_name) %>% distinct(). If you see duplicates here then there are slight differences in the input text.
    – Simon.S.A.
    Jul 16 '20 at 5:07

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