Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have two large data sets like these:

df1 <- data.frame(subject = c(rep(1, 15), rep(2, 14)), day =c(0,0,1,1,1,2,3,15,15,16,16,17,17,18,19,0,0,1,1,2,3,15,15,16,16,17,17,18,19),stime=c('4/16/2012 6:25','4/16/2012 7:01','4/17/2012 7:22','4/17/2012 7:45','4/17/2012 8:13','4/18/2012 6:50','4/19/2012 6:55','5/1/2012 6:28','5/1/2012 7:00','5/2/2012 6:28','5/2/2012 7:00','5/3/2012 6:22','5/3/2012 7:00','5/4/2012 6:26','5/5/2012 6:47','4/23/2012 5:56','4/23/2012 6:30','4/24/2012 6:55','4/24/2012 7:20','4/25/2012 6:32','4/26/2012 6:28','5/8/2012 5:54','5/8/2012 6:30','5/9/2012 5:55','5/9/2012 6:30','5/10/2012 5:55','5/10/2012 6:30','5/11/2012 6:41','5/12/2012 6:46'))

df2 <- data.frame(subject = c(rep(1, 10), rep(2, 10)), day =c(1,1,2,3,9,12,15,15,16,17,1,1,2,3,9,13,15,15,16,17),dtime=c('4/17/2012 7:15','4/17/2012 7:15','4/17/2012 7:15','4/17/2012 7:15','4/25/2012 7:15','4/28/2012 7:15','5/1/2012 7:15','5/1/2012 7:15','5/1/2012 7:15','5/1/2012 7:15','4/24/2012 6:45','4/24/2012 6:45','4/24/2012 6:45','4/24/2012 6:45','5/2/2012 7:00','5/6/2012 6:45','5/8/2012 6:45','5/8/2012 6:45','5/8/2012 6:45','5/8/2012 6:45'))

...

I want to merge the two data sets so that the 'dtime' in df2 could match the 'subject' and 'day' in df1, and fill out the missing value with '.' in df1, the row number should be the same as df1. The expected output should look like this:

merged <- data.frame(subject = c(rep(1, 15), rep(2, 14)), day =c(0,0,1,1,1,2,3,15,15,16,16,17,17,18,19,0,0,1,1,2,3,15,15,16,16,17,17,18,19),stime=c('4/16/2012 6:25','4/16/2012 7:01','4/17/2012 7:22','4/17/2012 7:45','4/17/2012 8:13','4/18/2012 6:50','4/19/2012 6:55','5/1/2012 6:28','5/1/2012 7:00','5/2/2012 6:28','5/2/2012 7:00','5/3/2012 6:22','5/3/2012 7:00','5/4/2012 6:26','5/5/2012 6:47','4/23/2012 5:56','4/23/2012 6:30','4/24/2012 6:55','4/24/2012 7:20','4/25/2012 6:32','4/26/2012 6:28','5/8/2012 5:54','5/8/2012 6:30','5/9/2012 5:55','5/9/2012 6:30','5/10/2012 5:55','5/10/2012 6:30','5/11/2012 6:41','5/12/2012 6:46'),dtime =c('.','.','4/17/2012 7:15','4/17/2012 7:15','4/17/2012 7:15','4/17/2012 7:15','4/17/2012 7:15','5/1/2012 7:15','5/1/2012 7:15','5/1/2012 7:15','5/1/2012 7:15','5/1/2012 7:15','5/1/2012 7:15','.','.','.','.','4/24/2012 6:45','4/24/2012 6:45','4/24/2012 6:45','4/24/2012 6:45','5/8/2012 6:45','5/8/2012 6:45','5/8/2012 6:45','5/8/2012 6:45','5/8/2012 6:45','5/8/2012 6:45','.','.'))

...

I tried to use merge(df1, df2, by = c('subject', 'day')), but its not working well, it produced extra rows that I do not want.

Does anyone have idea about realizing this?

share|improve this question
    
its not working well you mean because it drops the rows that are missing in df2? – David Robinson Apr 5 '14 at 20:47
    
it produced extra rows that I do not want, the row number should be the same as df1 – dzadi Apr 5 '14 at 21:01
up vote 2 down vote accepted

This seems to work.

result <- merge(df1,unique(df2),by=c("subject","day"),all.x=T)
result$dtime <- as.character(result$dtime)
result[is.na(result$dtime),]$dtime="."

Some notes:

  1. You don't need the by=... argument in merge(...) because the default is to merge on all common columns (which, in your case, are subject and day). I included it for clarity.
  2. The other answer produced extra columns because some of the rows in df2 are duplicated. In this case we can deal with that using unique(...), but usually this is a symptom of a bigger problem. You should really look into why there are duplicated rows...
  3. The way you have it set up, dtime is a factor. You have to convert that to character before you can set the NA's to something else.

Finally, if your datasets are indeed large (millions of rows), then consider using data tables. This will be much faster.

library(data.table)
dt1 <- data.table(df1,key="subject,day")
dt2 <- data.table(unique(df2),key="subject,day")
result <- dt2[dt1]
result[is.na(dtime),dtime:="."]
head(result)
#    subject day          dtime          stime
# 1:       1   0              . 4/16/2012 6:25
# 2:       1   0              . 4/16/2012 7:01
# 3:       1   1 4/17/2012 7:15 4/17/2012 7:22
# 4:       1   1 4/17/2012 7:15 4/17/2012 7:45
# 5:       1   1 4/17/2012 7:15 4/17/2012 8:13
# 6:       1   2 4/17/2012 7:15 4/18/2012 6:50
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.