This is a seemingly simple R question, but I don't see an exact answer here. I have a data frame (alldata) that looks like this:

Case     zip     market
1        44485   NA
2        44488   NA
3        43210   NA

There are over 3.5 million records.

Then, I have a second data frame, 'zipcodes'.

market    zip
1         44485
1         44486
1         44488
...       ... (100 zips in market 1)
2         43210
2         43211
...       ... (100 zips in market 2, etc.)

I want to find the correct value for alldata$market for each case based on alldata$zip matching the appropriate value in the zipcode data frame. I'm just looking for the right syntax, and assistance is much appreciated, as usual.

  • 1
    you are looking for merge. search SO for [r] merge and you will find it Jul 24, 2013 at 20:38
  • @Ricardo Saporta on 3.5 merge may be a bit slow. Jul 25, 2013 at 3:11
  • @TylerRinker, I use merge.data.table on 400 Million rows often, and its quite fast. Good call on using qdap though Jul 25, 2013 at 3:59
  • Oh wow never worked with data that large. Thanks for the experience informed response. Jul 25, 2013 at 4:10

5 Answers 5


Since you don't care about the market column in alldata, you can first strip it off using and merge the columns in alldata and zipcodes based on the zip column using merge:

merge(alldata[, c("Case", "zip")], zipcodes, by="zip")

The by parameter specifies the key criteria, so if you have a compound key, you could do something like by=c("zip", "otherfield").

  • Won't this introduce NAs for zip codes that are not in alldata?
    – Rodrigo
    Mar 1, 2018 at 23:42
  • @Rodrigo By default, you'll get only rows with matches in both data frames. That can be controlled with the all, all.x, and all.y options
    – Dan Garant
    Mar 2, 2018 at 13:13

Another option that worked for me and is very simple:

alldata$market<-with(zipcodes, market[match(alldata$zip, zip)])
  • So simple yet so great!
    – vashts85
    Nov 1, 2017 at 22:48
  • 2
    It would be great if you could explain what's going on there.
    – Rodrigo
    Mar 1, 2018 at 23:43
  • From R docs: "match returns a vector of the positions of (first) matches of its first argument in its second". So basically match returns a vector of right indices to access zipcodes$market to get the right market values for alldata$market.
    – Aelian
    Oct 17, 2020 at 6:11

With such a large data set you may want the speed of an environment lookup. You can use the lookup function from the qdapTools package as follows:

alldata$market <- lookup(alldata$zip, zipcodes[, 2:1])


alldata$zip %l% zipcodes[, 2:1]
  • Tyler, I tested this on a bit bigger data and the step lookup(.) proved time consuming (I stopped it after a while). I've it as a gist. Am I doing it right? With a quick debug, the time consuming portion seems to be sapply(.) inside recoder function.
    – Arun
    May 8, 2014 at 22:58
  • @Arun Thanks for the gist. I added some improvements in the dev version based on your findings that makes significant speed boosts. May 9, 2014 at 4:30
  • Just out of curiosity did you bench data.table to see how it compares. I have read data.table has made some nice improvements in lookups including character lookups. May 9, 2014 at 5:37
  • 1
    I've edited the gist with two ways. 1) A join (although it is really not needed here) and 2) using match and :=, would be nicer to benchmark on huge data though. HTH.
    – Arun
    May 9, 2014 at 5:52
  • 1
    Yes, quite a few welcoming changes from 1.9.0+. This should be convincing: require(data.table); set.seed(1L); x = sample(paste0("V", 1:1e6)); system.time(ans1 <- data.table:::forderv(x)); system.time(ans2 <- order(x)); identical(ans1, ans2).
    – Arun
    May 9, 2014 at 6:01

Here's the dplyr way of doing it:

alldata %>%
  select(-market) %>%
  left_join(zipcodes, by="zip")

which, on my machine, is roughly the same performance as lookup.


The syntax of match is a bit clumsy. You might find the lookup package easier to use.

alldata <- data.frame(Case=1:3, zip=c(44485,44488,43210), market=c(NA,NA,NA))
zipcodes <- data.frame(market=c(1,1,1,2,2), zip=c(44485,44486,44488,43210,43211))
alldata$market <- lookup(alldata$zip, zipcodes$zip, zipcodes$market)
##   Case   zip market
## 1    1 44485      1
## 2    2 44488      1
## 3    3 43210      2

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