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Problem: I am trying to use dplyr or ave to do the following:

By group ID, if x1 at a given time period is 0 and the previous (t-1) and future (t+1) values equal 1, fill x1 with 1.

     ID = c("1","1","1","1","1","2","2","2","2","3","3","3")
     time = c("1","2","3","4","5","1","2","3","4","1","2","3")
     x1 = as.integer(c("0","1","0","1","1","0","0","0","0","1","0","1"))
     df = data.frame(ID,time,x1)

Data:

  ID time x1 
  1    1  0 
  1    2  1 
  1    3  0 
  1    4  1 
  1    5  1 
  2    1  0 
  2    2  0 
  2    3  0 
  2    4  0 
  3    1  1 
  3    2  0 
  3    3  1 

Output I am trying to obtain:

  ID time x1 
  1    1  0  
  1    2  1  
  1    3  1  
  1    4  1  
  1    5  1  
  2    1  0  
  2    2  0  
  2    3  0  
  2    4  0  
  3    1  1  
  3    2  1  
  3    3  1  
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library(dplyr)
df %>%
group_by(id) %>%
mutate(x1 = ifelse(lead(x1) == 1 & lag(x1) == 1 & x1 == 0, 1, x1))

You can just group by the id and use logic with lead and lag functions from dplyr to fill in the 1.

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