# Is there a more efficient algorithm to search

I am trying to merge two datasets together in R based on two criteria. They have to have the same id and year. One of the vector has the size of about 10000 and the other 2000. I think if I do a two level one by one search, the computing time would explode. The data is sorted by id and year. Is there a more efficient search algorithm than the naive comparison ?

• Yes. It's sorted by id and year. I have edited the question. – Yan Song Apr 19 '14 at 23:59
• Note that 10k and 2k is relatively small numbers for a computer. So, here `explode` means about...1ms or something (extremely relative of course, but you get my point)? Since it's sorted you can skip ahead when things don't match. – keyser Apr 20 '14 at 0:01
• Have you tried `merge`? – flodel Apr 20 '14 at 0:04
• There are 4 vectors. two year and two id vectors. So there would be 2000^10000*2 comparions. I am not sure if I am thinking this problem correctly. – Yan Song Apr 20 '14 at 0:20
• Well, post some sample from each dataset so we can see better. – Fernando Apr 20 '14 at 0:45

There are many solutions to this problem, e.g. by merge, by indexing, by looping (as you said).

However, the most elegant solution is by using the `data.table` package, which is really fast for managing data sets, and can be considered an evolved version of `data.frame`.

Let us first set up the data: Based on the limited information that you have provided in the question, here is a dummy attempt to solve the problem.

``````install.packages("data.table")

library(data.table)

set.seed(100)
dt1 <- data.table(
id = 1:10000,
Year = sample(1950:2014,size=10000,replace = TRUE),
v1 = runif(10000)
)

dt2 <- data.table(
id = sample(1:10000,2000),
Year = sample(1950:2014,size=2000,replace = TRUE),
v2 = runif(2000),
v3 = runif(2000)
)
``````

Once data is set up, remaining part is very simple.

Step1: Set the keys.

``````setkey(dt1,id,Year)  # Set keys in first table
setkey(dt2,id,Year)  # Set keys in second table
``````

Step2: Merge which ever way you want.

``````dt1[dt2,nomatch=0]
dt2[dt1,nomatch=0]
``````

The time taken to merge the data is about 0.02 second. This works extremely fast for very large data-sets as well.

``````system.time(dt1[dt2,nomatch=0])    # 0.02 sec
system.time(dt2[dt1,nomatch=0])    # 0.02 sec
``````

``````?example(data.table)
• Exactly. There are two others nice reads as well. Try: `vignette("datatable-faq")` and `vignette("datatable-timings")` – Shambho Apr 20 '14 at 23:25
• @YanSong, this answer may help answer some questions about `data.table` and binary search. – Arun Apr 26 '14 at 0:44