I have the following dataset in which the value in column "value" is valid from the start until the end date:
data.table(company = c("A", "A", "B", "B"), person = c("a", "b", "b", "c"), value = c(2,3,5,5), start_date = c("2015-01-01", "2015-01-04", "2015-01-02", "2015-01-06"), end_date = c("2015-01-06", "2015-01-07", "2015-01-07", "2015-01-07"))
company person value start_date end_date
1: A a 2 2015-01-01 2015-01-06
2: A b 3 2015-01-04 2015-01-07
3: B b 5 2015-01-02 2015-01-07
4: B c 5 2015-01-06 2015-01-07
I would like to calculate three things based on this data:
- the average value per company per date
- the number of companies per date
- the number of people per company per date
I have tried the following which works like a charm for my test sample, but it fails miserably in on the actual dataset as it is requires a lot of computing power. I know that it is caused by making a dataset with a separate row per company per person per date, however, I don't know how to get around this using some kind of function in R.
Tried code:
test$start_date = as.Date(as.character(test$start_date), format = "%Y-%m-%d")
test$end_date = as.Date(as.character(test$end_date), format = "%Y-%m-%d")
#indexing per row
indxtest = test[,.(Date=seq(from = min(start_date), to = max(end_date), by = "day")), by = 1:nrow(test)]
test = test[, nrow := 1:nrow(test)]
test = merge(indxtest, test, by = "nrow", all.x = TRUE)
setDT(test, "company","Date")
test = test[, mean_EPS := mean(value, na.rm = TRUE), by = c("company", "Date")]
test = test[, Number_people := .N, by = c("company", "Date")]
test = test[, number_companies := uniqueN(company), by = "Date"]
my current outcome would look something like:
nrow Date company person value start_date end_date mean_value Number_people number_companies
1: 1 2015-01-01 A a 2 2015-01-01 2015-01-06 2.0 1 1
2: 1 2015-01-02 A a 2 2015-01-01 2015-01-06 2.0 1 2
3: 3 2015-01-02 B b 5 2015-01-02 2015-01-07 5.0 1 2
4: 1 2015-01-03 A a 2 2015-01-01 2015-01-06 2.0 1 2
5: 3 2015-01-03 B b 5 2015-01-02 2015-01-07 5.0 1 2
6: 1 2015-01-04 A a 2 2015-01-01 2015-01-06 2.5 2 2
7: 2 2015-01-04 A b 3 2015-01-04 2015-01-07 2.5 2 2
8: 3 2015-01-04 B b 5 2015-01-02 2015-01-07 5.0 1 2
9: 1 2015-01-05 A a 2 2015-01-01 2015-01-06 2.5 2 2
10: 2 2015-01-05 A b 3 2015-01-04 2015-01-07 2.5 2 2
11: 3 2015-01-05 B b 5 2015-01-02 2015-01-07 5.0 1 2
12: 1 2015-01-06 A a 2 2015-01-01 2015-01-06 2.5 2 2
13: 2 2015-01-06 A b 3 2015-01-04 2015-01-07 2.5 2 2
14: 3 2015-01-06 B b 5 2015-01-02 2015-01-07 5.0 2 2
15: 4 2015-01-06 B c 5 2015-01-06 2015-01-07 5.0 2 2
16: 2 2015-01-07 A b 3 2015-01-04 2015-01-07 3.0 1 2
17: 3 2015-01-07 B b 5 2015-01-02 2015-01-07 5.0 2 2
18: 4 2015-01-07 B c 5 2015-01-06 2015-01-07 5.0 2 2
I have not been able to find anything related on here apart from the solution I had thought of myself, however, if there is a reference would be a great help.