I am trying to select relevant rows from a large time-series data set. The tricky bit is, that the needed rows are before and after certain values in a column.
# example data
x <- rnorm(100)
y <- rep(0,100)
y[c(13,44,80)] <- 1
y[c(20,34,92)] <- 2
df <- data.frame(x,y)
In this case the critical values are 1 and 2 in the df$y column. If, e.g., I want to select 2 rows before and 4 after df$y==1 I can do:
ones<-which(df$y==1)
selection <- NULL
for (i in ones) {
  jj <- (i-2):(i+4)
  selection <- c(selection,jj)
}
df$selection <- 0
df$selection[selection] <- 1
This, arguably, scales poorly for more values. For df$y==2 I would have to repeat with:
twos<-which(df$y==2)
selection <- NULL
for (i in twos) {
  jj <- (i-2):(i+4)
  selection <- c(selection,jj)
}
df$selection[selection] <- 2
Ideal scenario would be a function doing something similar to this imaginary function  selector(data=df$y, values=c(1,2), before=2, after=5, afterafter = FALSE, beforebefore=FALSE), where values is fed with the critical values, before with the amount of rows to select before and correspondingly after. 
Whereas, afterafter would allow for the possibility to go from certain rows until certain rows after the value, e.g. after=5,afterafter=10 (same but going into the other direction with afterafter).
Any tips and suggestions are very welcome! Thanks!
 
     
    