2

I have the following dataset:

id   code        date   charge  
 1    AAA   01jan2016       23  
 1    BBB   20jan2016       45  
 1    CCC   19feb2018       23  
 1    DDD   20jan2019      123  
 1    EEE   02jan2016       43  
 1    FFF   12dec2015       12  
 2    AAA   07jan2017       12  
 2    BBB   08jan2017       32  
 2    CCC   06jan2017       12  
 2    DDD   10oct2019       12  
 3    AAA   12dec2014       12  
 3    BBB   18dec2014       12  
 3    CCC   01dec2014       13  

How can I keep all the records, which are within -30 to +90 days of code AAA?

This is the output I expect:

id   code        date   charge  
 1    AAA   01jan2016       23  
 1    BBB   20jan2016       45  
 1    EEE   02jan2016       43  
 1    FFF   12dec2015       12  
 2    AAA   07jan2017       12  
 2    BBB   08jan2017       32  
 2    CCC   06jan2017       12  
 3    AAA   12dec2014       12  
 3    BBB   18dec2014       12  
 3    CCC   01dec2014       13  

I tried to use the filter of date but the date of AAA is different for all ID's so it did not work.

1

An option would be to first convert the 'Date' to Date class (mdy - from lubridate), then grouped by 'ID', check whether the 'Date' values are between the 30 days before the 'Date' on which 'Code' is "AAA" and within 90 days after that 'Date'

library(dplyr)
library(lubridate)
df1 %>%
   mutate(Date = mdy(Date)) %>%
    group_by(ID) %>%
    filter(between(Date, min(Date[Code == "AAA"]) - days(30),
             min(Date[Code == "AAA"]) + days(90)))
# A tibble: 10 x 4
# Groups:   ID [3]
#      ID Code  Date       Charge
#   <int> <chr> <date>      <dbl>
# 1     1 AAA   2016-01-01     23
# 2     1 BBB   2016-01-20     45
# 3     1 EEE   2016-01-02     43
# 4     1 FFF   2015-12-12     12
# 5     2 AAA   2017-01-07     12
# 6     2 BBB   2017-01-08     32
# 7     2 CCC   2017-01-06     12
# 8     3 AAA   2014-12-12     12
# 9     3 BBB   2014-12-18     12
#10     3 CCC   2014-12-01     13

data

df1 <- structure(list(ID = c(1L, 1L, 1L, 1L, 1L, 1L, 2L, 2L, 2L, 2L, 
3L, 3L, 3L), Code = c("AAA", "BBB", "CCC", "DDD", "EEE", "FFF", 
"AAA", "BBB", "CCC", "DDD", "AAA", "BBB", "CCC"), Date = c("1/1/2016", 
"1/20/2016", "2/19/2018", "1/20/2019", "1/2/2016", "12/12/2015", 
"1/7/2017", "1/8/2017", "1/6/2017", "10/10/2019", "12/12/2014", 
"12/18/2014", "12/1/2014"), Charge = c(23, 45, 23, 123, 43, 12, 
12, 32, 12, 12, 12, 12, 13)), class = "data.frame", row.names = c(NA, 
-13L))
1

A Stata solution is the following:

clear
input byte id str3 code float date int charge
1 "AAA" 20454  23
1 "BBB" 20473  45
1 "CCC" 21234  23
1 "DDD" 21569 123
1 "EEE" 20455  43
1 "FFF" 20434  12
2 "AAA" 20826  12
2 "BBB" 20827  32
2 "CCC" 20825  12
2 "DDD" 21832  12
3 "AAA" 20069  12
3 "BBB" 20075  12
3 "CCC" 20058  13
end
format %td date

bysort id (code date): generate delta = date - date[1]
keep if delta >= -30 & delta <= 90

Results:

list, sepby(id)

     +----------------------------------------+
     | id   code        date   charge   delta |
     |----------------------------------------|
  1. |  1    AAA   01jan2016       23       0 |
  2. |  1    BBB   20jan2016       45      19 |
  3. |  1    EEE   02jan2016       43       1 |
  4. |  1    FFF   12dec2015       12     -20 |
     |----------------------------------------|
  5. |  2    AAA   07jan2017       12       0 |
  6. |  2    BBB   08jan2017       32       1 |
  7. |  2    CCC   06jan2017       12      -1 |
     |----------------------------------------|
  8. |  3    AAA   12dec2014       12       0 |
  9. |  3    BBB   18dec2014       12       6 |
 10. |  3    CCC   01dec2014       13     -11 |
     +----------------------------------------+

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