Sorry for the long question. I will try my best to clarify my goal clealy
I want to add dummies in data.table using the update method, just like this already answered in this link, but a little bit more complicated.
For better description, I created the data.
DT <- data.table(UID = paste0("UID",rep(1:5,each=2)),
date = as.IDate(c("2012-01-01","2012-01-02","2012-01-03","2012-01-04","2012-01-05","2012-01-06","2012-02-01","2012-02-02","2012-02-03","2012-02-04")),
value = c(1:10))
The DT is a data.table containing the information of UID, date, and value. In the original data, the structure is just the same, but with long time span(2 years).
Here I want to add dummies based on the date.
there're several special time spans in date, we can just use vacations to represent them.
For example, in the fake data I created above.
There're two vacations
- From "2012-01-02" to "2012-01-05"
- From "2012-02-02" to "2012-02-03"
I want to add 2 types of dummies
- Dummies about the length of vacation: First calculate the length from different vacations. In this example, we have two different lengths (2, and 4 ). So we'll add 2 dummies indicating whether the date are in these vacations.
The expected result is like this:
UID Date Val D_length_2 D_length_4 UID1 1/1/2012 1 FALSE FALSE UID2 1/2/2012 2 FALSE TRUE UID3 1/3/2012 3 FALSE TRUE UID4 1/4/2012 4 FALSE TRUE UID5 1/5/2012 5 FALSE TRUE UID1 1/6/2012 6 FALSE FALSE UID2 2/1/2012 7 TRUE FALSE UID3 2/2/2012 8 TRUE FALSE UID4 2/3/2012 9 FALSE FALSE UID5 2/4/2012 10 FALSE FALSE
- Dummies about whether the day is exactly one day before the vacation, or exactly one day after the vacation.
UID Date Val Before After UID1 1/1/2012 1 TRUE FALSE UID2 1/2/2012 2 FALSE FALSE UID3 1/3/2012 3 FALSE FALSE UID4 1/4/2012 4 FALSE FALSE UID5 1/5/2012 5 FALSE FALSE UID1 1/6/2012 6 FALSE TRUE UID2 2/1/2012 7 TRUE FALSE UID3 2/2/2012 8 FALSE FALSE UID4 2/3/2012 9 FALSE FALSE UID5 2/4/2012 10 FALSE TRUE
So the total of desired results is like this
UID Date Val Before After D_length_2 D_length_4 UID1 1/1/2012 1 TRUE FALSE FALSE FALSE UID2 1/2/2012 2 FALSE FALSE FALSE TRUE UID3 1/3/2012 3 FALSE FALSE FALSE TRUE UID4 1/4/2012 4 FALSE FALSE FALSE TRUE UID5 1/5/2012 5 FALSE FALSE FALSE TRUE UID1 1/6/2012 6 FALSE TRUE FALSE FALSE UID2 2/1/2012 7 TRUE FALSE FALSE FALSE UID3 2/2/2012 8 FALSE FALSE TRUE FALSE UID4 2/3/2012 9 FALSE FALSE TRUE FALSE UID5 2/4/2012 10 FALSE TRUE FALSE FALSE
The total observations are more than 10M rows, with about 10 different vacations and 4 different length.
For the second type of dummies, I think
f <- function(x){
ifelse(x %in% as.Date(c("2012-01-02","2012-02-02")) - 1, return(TRUE), return(FALSE))
}
DT[,Before:= f(date)]
But it seems not correct.
For the first one, I didn't come up with a good solution.
this problem is about the update in data.table, any thoughts about how to deal with it and how to write the update functions are extremely welcome!