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how to use merge() to update a table in R

What is the proper use of merge for this kind of operation in R? See below.

older <- data.frame(Member=c("first","second","third","fourth"),
newer <- data.frame(Member=c("third","first"),

  Member  VAL
  1  first 4587
  2  first   NA
  3 fourth   NA
  4 second   NA
  5  third 2125
  6  third   NA

That above is not exactly what I expect, I want to replace the older entries by newer ones, and not add another row. Like below. And I fail with merge.data.frame.

  Member  VAL
  1  first 4587
  2 second   NA
  3  third 2125
  4 fourth   NA

Kind of selective row replacement, where newer takes precedence and could not contain other Members than those in older.

Is there proper English term for such a R operation and is there prebuilt function for that?

Thank you.

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marked as duplicate by Petr Matousu, mnel, evilone, Lafada, Jean-François Corbett Dec 13 '12 at 7:31

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

If you use by='Member' and all=TRUE you get a new column with the structure you're looking for. But I'm curious to know if you can use merge and return only that column. –  Justin Dec 11 '12 at 16:51
There is similar question with two possible solution posted previously on SO –  Didzis Elferts Dec 11 '12 at 17:00
@Petr Could newer contain a fifth entry? –  Matthew Plourde Dec 11 '12 at 17:04
@Matthew Thanks for asking, no newer could not contain other Members than those in older. I made edit to add this important detail. –  Petr Matousu Dec 11 '12 at 17:48
@Justin It looks like your hint could work well for me, at least small wraper function will do the job. Thank you very much for advice. –  Petr Matousu Dec 11 '12 at 18:06

1 Answer 1

You have effectively answered your own question.

If you want to deal with Matthew Ploude's point you could use

older$VAL[match(newer[newer$Member %in% older$Member, ]$Member, older$Member)
          ]  <- newer[newer$Member %in% older$Member, ]$VAL

This also the effect that where newer has multiple new values, it is the latest which ends up in older so for example

older <- data.frame(Member=c("first","second","third","fourth"),
newer <- data.frame(Member=c("third","first","fifth","first"),

older$VAL[match(newer[newer$Member %in% older$Member,]$Member, older$Member)
          ]  <- newer[newer$Member %in% older$Member,]$VAL


> older
  Member  VAL
1  first 9876
2 second   NA
3  third 2125
4 fourth 5678
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