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I asked a very similar question just before. The difference is, before it was a situation with only one company. Now it's a panel data structure. I want to merge two data.frames by date. Data contains stock data for each trading day of a stock. Events contains news about the company. Some news were published on non-trading days, so there are no stock data for this day. For example on 04.01.2000 some news for company "A" were published. I want to merge this article with the return of the NEXT trading day, in this case the return on the 06.01.2000. So how can I jump to the next trading day when merging in a panel situation?

date1 <- c("01.01.2000","02.01.2000","03.01.2000","06.01.2000","07.01.2000","09.01.2000","01.01.2000","02.01.2000","03.01.2000","06.01.2000","07.01.2000","09.01.2000")
ret1 <- c(-2.0,1.1,3,1.4,-0.2, 0.6, 0.1, -0.21, -1.2, 0.9, 0.3, -0.1)
company1 <- c("A","A","A","A","A","A","B","B","B","B","B","B")
df <- data.frame(date1, ret1, company1)
df

#         date1  ret1 company1
# 1  01.01.2000 -2.00        A
# 2  02.01.2000  1.10        A
# 3  03.01.2000  3.00        A
# 4  06.01.2000  1.40        A
# 5  07.01.2000 -0.20        A
# 6  09.01.2000  0.60        A
# 7  01.01.2000  0.10        B
# 8  02.01.2000 -0.21        B
# 9  03.01.2000 -1.20        B
# 10 06.01.2000  0.90        B
# 11 07.01.2000  0.30        B
# 12 09.01.2000 -0.10        B

date2 <- c("02.01.2000","03.01.2000","04.01.2000","08.01.2000","05.01.2000","08.01.2000","09.01.2000")
news2 <- c("blabla11", "blabla12","blabla13","blabla14","blabla21","blabla22","blabla23")
company2 <- c("A","A","A","A","B","B","B")

event <- data.frame(date2, news2, company2)
event 

#        date2    news2 company2
# 1 02.01.2000 blabla11        A
# 2 03.01.2000 blabla12        A
# 3 04.01.2000 blabla13        A
# 4 08.01.2000 blabla14        A
# 5 05.01.2000 blabla21        B
# 6 08.01.2000 blabla22        B
# 7 09.01.2000 blabla23        B

the output should look like this:

#        date2    news2 company2 date1        ret
# 1 02.01.2000 blabla11        A 02.01.2000  1.10
# 2 03.01.2000 blabla12        A 03.01.2000  3.00
# 3 04.01.2000 blabla13        A 06.01.2000  1.40
# 4 08.01.2000 blabla14        A 09.01.2000  0.60
# 5 05.01.2000 blabla21        B 06.01.2000  0.90
# 6 08.01.2000 blabla22        B 09.01.2000 -0.10
# 7 09.01.2000 blabla23        B 09.01.2000 -0.10
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1 Answer 1

up vote 1 down vote accepted

It's more or less the same as your other question. The only change is that you'll have to set "company,date" as the key columns to perform the join on (note that the order is important - it'll first sort by company and then by date).

require(data.table) ## 1.9.2
setDT(df)
setDT(event)
setkey(df, company1, date1)
setkey(event, company2, date2)
df[, date := date1]
df[event, roll=-Inf]

   company1      date1 ret1       date    news2
1:        A 02.01.2000  1.1 02.01.2000 blabla11
2:        A 03.01.2000  3.0 03.01.2000 blabla12
3:        A 04.01.2000  1.4 06.01.2000 blabla13
4:        A 08.01.2000  0.6 09.01.2000 blabla14
5:        B 05.01.2000  0.9 06.01.2000 blabla21
6:        B 08.01.2000 -0.1 09.01.2000 blabla22
7:        B 09.01.2000 -0.1 09.01.2000 blabla23
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@ Arun: thank you so much! I would be lost without people like you! –  cptn Apr 26 at 11:04

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