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I have 2 very large data sets that looks like below:

merge_data <- data.frame(ID = c(1,2,3,4,5,6,7,8,9,10), 
                         position=c("yes","no","yes","no","yes", 
                                    "no","yes","no","yes","yes"),
                         school = c("a","b","a","a","c","b","c","d","d","e"),
                         year1 = c(2000,2000,2000,2001,2001,2000,
                                   2003,2005,2008,2009), 
                         year2=year1-1)


 merge_data

 ID position school year1 year2
 1   1  support   a  2000  1999
 2   2   oppose   b  2000  1999
 3   3  support   a  2000  1999
 4   4   oppose   a  2001  2000
 5   5  support   c  2001  2000
 6   6   oppose   b  2000  1999
 7   7  support   c  2003  2002
 8   8   oppose   d  2005  2004
 9   9  support   d  2008  2007
 10 10  support   e  2009  2008



merge_data_2 <- data.frame(year=c(1999,1999,2000,2000,2000,2001,2003
                                  ,2012,2009,2009,2008,2002,2009,2005,
                                  2001,2000,2002,2000,2008,2005),
                           amount=c(100,200,300,400,500,600,700,800,900,
                                    1000,1100,1200,1300,1400,1500,1600,
                                    1700,1800,1900,2000), 
                           ID=c(1,1,2,2,2,3,3,3,5,6,8,9,10,13,15,17,19,20,21,7))


  merge_data_2
   year amount ID
1  1999    100  1
2  1999    200  1
3  2000    300  2
4  2000    400  2
5  2000    500  2
6  2001    600  3
7  2003    700  3
8  2012    800  3
9  2009    900  5
10 2009   1000  6
11 2008   1100  8
12 2002   1200  9
13 2009   1300 10
14 2005   1400 13
15 2001   1500 15
16 2000   1600 17
17 2002   1700 19
18 2000   1800 20
19 2008   1900 21
20 2005   2000  7

And what I want is:

 ID position school year1 year2 amount
 1    yes    a      2000  1999  300
 2    no     b      2000  1999  1200
10    yes    e      2009  2008  1300

for ID=1 in the merge_data_2, we have amount =300, since there are 2 cases where ID=1,and their year1 or year1 is equal to the year of ID=1 in merge_data

So basically what I want is to perform a merge based on the ID and year. 2 conditions:

  1. ID from merge_data matches the ID from merge_data_2
  2. one of the year1 and year2 from merge_data also matches the year from merge_data_2. then make the merge based on the sum of the amount for each IDs.

and I think the code will be something looks like:

merge_data_final <- merge(merge_data, merge_data_2, 
                          merge_data$ID == merge_data_2$ID && (merge_data$year1 || 
                            merge_data$year2 == merge_data_2$year))

Then somehow to aggregate the amount by ID.

Obviously I know the code is wrong, and I have been thinking about plyr or reshape library, but was having difficulties of getting my hands on them.

Any helps would be great! thanks guys!

share|improve this question
1  
What if a year in merge_data_2 matches both year1 and year2 in merge_data_1? –  Justin Aug 21 '12 at 19:53
    
I don't think your input data matches your output data, specifically I don't think school e would match. I also get an error in your first code chunk because year1 does not exist at the time when you are creating year2...my guess is that you had that defined previously in your workspace, but it fails when run on a clean R install. –  Chase Aug 21 '12 at 20:07
    
Finally, is the amount column supposed to be summed over some other columns? I return three rows for ID2 which have values of 500,300,400...that totals 1200, but summing them up is not mentioned in your requirements. Please clarify. –  Chase Aug 21 '12 at 20:08
    
@Justin, if year in merge_data_2 matches both year1 and year2 in merge_data_1, then I wanna sum the amount –  user1489597 Aug 21 '12 at 20:20
    
@ Chase, I'm sorry for the mistake, yes you are right, I have just corrected it –  user1489597 Aug 21 '12 at 20:23

1 Answer 1

up vote 9 down vote accepted

As noted above, I think you have some discrepancies between your example input and output data. Here's the basic approach - you were on the right track with reshape2. You can simply melt() your data into long format so you are joining on a single column instead of the either/or bit you had going on before.

library(reshape2)
#melt into long format
merge_data_m <- melt(merge_data, measure.vars = c("year1", "year2"))
#merge together, specifying the joining columns
merge(merge_data_m, merge_data_2, by.x = c("ID", "value"), by.y = c("ID", "year"))
#-----
  ID value position school variable amount
1  1  1999      yes      a    year2    100
2  1  1999      yes      a    year2    200
3  2  2000       no      b    year1    500
4  2  2000       no      b    year1    300
5  2  2000       no      b    year1    400
share|improve this answer
    
This is almost what I need, thank you so much!! btw, how do I mark this answer? –  user1489597 Aug 21 '12 at 20:44
    
@user1489597 - there should be a blank "check" mark next to my answer that you can select. It should then become "green" indicating that this is the preferred answer. –  Chase Aug 21 '12 at 20:49
    
all done, thanks again! :P –  user1489597 Aug 21 '12 at 20:55

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