0

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) %>% 
  filter(reign_begin)  
#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 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 at 21:00
0

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.

| improve this answer | |
  • 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 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 at 1:30
  • Do you have any thought on alternative approaches or tweaks? Thanks! – wnettles Jul 16 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 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 at 5:07

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.