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Given two data frames:

df1 = data.frame(CustomerId = c(1:6), Product = c(rep("Toaster", 3), rep("Radio", 3)))
df2 = data.frame(CustomerId = c(2, 4, 6), State = c(rep("Alabama", 2), rep("Ohio", 1)))

df1
#  CustomerId Product
#           1 Toaster
#           2 Toaster
#           3 Toaster
#           4   Radio
#           5   Radio
#           6   Radio

df2
#  CustomerId   State
#           2 Alabama
#           4 Alabama
#           6    Ohio

How can I do database style, i.e., sql style, joins? That is, how do I get:

  • An inner join of df1 and df2:
    Return only the rows in which the left table have matching keys in the right table.
  • An outer join of df1 and df2:
    Returns all rows from both tables, join records from the left which have matching keys in the right table.
  • A left outer join (or simply left join) of df1 and df2
    Return all rows from the left table, and any rows with matching keys from the right table.
  • A right outer join of df1 and df2
    Return all rows from the right table, and any rows with matching keys from the left table.

P.S. IKT-JARQ (I Know This - Just Adding R Questions)

Extra credit:

How can I do a sql style select statement?

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2  
@user3114046 There are actually four distinct and valid approaches in the answers below, each drawing on a different package and with its own merits - so if it's really an RTFM question, then that seems like solid justification to allow those kinds of questions, since they can produce unexpected answers. Is the rep involved absurd? Hell yes - my trivial answer is a full third of my total rep. But this question was part of a mass effort to make StackOverflow the premier site for R help on the web and, judging from its rank when googling "R join" and the 80k visits to date, it's done a fine job. –  Matt Parker May 23 '14 at 15:49
    
@MattParker I was probably in a bad mood that day. I upvoted the first dplyr answer, that's become my favorite way to do this now. Yes, this question comes up as the first hit in my particular search bubble too. –  James King May 23 '14 at 17:01
    
stat545-ubc.github.io/bit001_dplyr-cheatsheet.html ←my favourite answer to this question –  isomorphismes Jul 21 at 0:26

8 Answers 8

up vote 407 down vote accepted

By using the merge function and its optional parameters:

Inner join: merge(df1, df2) will work for these examples because R automatically joins the frames by common variable names, but you would most likely want to specify merge(df1, df2, by = "CustomerId") to make sure that you were matching on only the fields you desired. You can also use the by.x and by.y parameters if the matching variables have different names in the different data frames.

Outer join: merge(x = df1, y = df2, by = "CustomerId", all = TRUE)

Left outer: merge(x = df1, y = df2, by = "CustomerId", all.x = TRUE)

Right outer: merge(x = df1, y = df2, by = "CustomerId", all.y = TRUE)

Cross join: merge(x = df1, y = df2, by = NULL)

Just as with the inner join, you would probably want to explicitly pass "CustomerId" to R as the matching variable. I think it's almost always best to explicitly state the identifiers on which you want to merge; it's safer if the input data.frames change unexpectedly and easier to read later on.

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@MattParker I have been using sqldf package for a whole host of complex queries against dataframes, really needed it to do a self-cross join (ie data.frame cross-joining itself) I wonder how it compares from a performance perspective....??? –  Nicholas Hamilton Feb 12 '13 at 4:42
1  
@ADP I've never really used sqldf, so I'm not sure about speed. If performance is a major issue for you, you should also look into the data.table package - that's a whole new set of join syntax, but it's radically faster than anything we're talking about here. –  Matt Parker Feb 12 '13 at 16:22
1  
And yet again I am looking for this post, it helps me over and over again. –  CousinCocaine May 15 at 14:43

I would recommend checking out Gabor Grothendieck's sqldf package, which allows you to express these operations in SQL.

library(sqldf)

## inner join
df3 <- sqldf("SELECT CustomerId, Product, State 
              FROM df1
              JOIN df2 USING(CustomerID)")

## left join (substitute 'right' for right join)
df4 <- sqldf("SELECT CustomerId, Product, State 
              FROM df1
              LEFT JOIN df2 USING(CustomerID)")

I find the SQL syntax to be simpler and more natural than its R equivalent (but this may just reflect my RDBMS bias).

See Gabor's sqldf GitHub for more information on joins.

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There is the data.table approach for an inner join, which is very time and memory efficient (and necessary for some larger data.frames):

library(data.table)

dt1 <- data.table(df1, key = "CustomerId") 
dt2 <- data.table(df2, key = "CustomerId")

joined.dt1.dt.2 <- dt1[dt2]

base::merge also works on data.tables:

merge(dt1, dt2)

data.table documented on stackoverflow:
How to do a data.table merge operation
Translating SQL joins on foreign keys to R data.table syntax
Efficient alternatives to merge for larger data.frames R
How to do a basic left outer join with data.table in R?

Yet another option is the join function found in the plyr package

library(plyr)

join(df1, df2,
     type = "inner")

#   CustomerId Product   State
# 1          2 Toaster Alabama
# 2          4   Radio Alabama
# 3          6   Radio    Ohio

Options for type: inner, left, right, full.

From ?join: Unlike merge, [join] preserves the order of x no matter what join type is used.

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+1 for mentioning plyr::join. Microbenchmarking indicates, that it performs about 3 times faster than merge. –  Beasterfield May 30 '13 at 11:28
4  
However, data.table is much faster than both. There is also great support in SO, i don't see many package writers answering questions here as often as the data.table writer or contributors. –  marbel Jan 2 '14 at 2:36
    
What is the data.table syntax for merging a list of data frames? –  Aleksandr Blekh Aug 6 '14 at 3:45

There are some good examples of doing this over at the R Wiki. I'll steal a couple here:

Merge Method

Since your keys are named the same the short way to do an inner join is merge():

merge(df1,df2)

a full inner join (all records from both tables) can be created with the "all" keyword:

merge(df1,df2, all=TRUE)

a left outer join of df1 and df2:

merge(df1,df2, all.x=TRUE)

a right outer join of df1 and df2:

merge(df1,df2, all.y=TRUE)

you can flip 'em, slap 'em and rub 'em down to get the other two outer joins you asked about :)

Subscript Method

A left outer join with df1 on the left using a subscript method would be:

df1[,"State"]<-df2[df1[ ,"Product"], "State"]

The other combination of outer joins can be created by mungling the left outer join subscript example. (yeah, I know that's the equivalent of saying "I'll leave it as an exercise for the reader...")

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You can do joins as well using Hadley Wickham's awesome new dplyr package.

Here is how you can do most of the joins in the original question with dplyr

library(dplyr)

#make sure that CustomerId cols are both type numeric
#they ARE not using the provided code in question and dplyr will complain
df1$CustomerId <- as.numeric(df1$CustomerId)
df2$CustomerId <- as.numeric(df2$CustomerId)


#inner
inner_join(df1, df2)

#left outer
left_join(df1, df2)

#right outer (just reverse argument order)
left_join(df2, df1)
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Why do you need to convert CustomerId to numeric? I don't see any mentioning in documentation (for both plyr and dplyr) about this type of restriction. Would your code work incorrectly, if the merge column would be of character type (especially interested in plyr)? Am I missing something? –  Aleksandr Blekh Oct 11 '14 at 3:37

New in 2014:

Especially if you're also interested in data manipulation in general (including sorting, filtering, subsetting, summarizing etc.), you should definitely take a look at dplyr, which comes with a variety of functions all designed to facilitate your work specifically with data frames and certain other database types. It even offers quite an elaborate SQL interface, and even a function to convert (most) SQL code directly into R.

The four joining-related functions in the dplyr package are (to quote):

  • inner_join(x, y, by = NULL, copy = FALSE, ...): return all rows from x where there are matching values in y, and all columns from x and y
  • left_join(x, y, by = NULL, copy = FALSE, ...): return all rows from x, and all columns from x and y
  • semi_join(x, y, by = NULL, copy = FALSE, ...): return all rows from x where there are matching values in y, keeping just columns from x.
  • anti_join(x, y, by = NULL, copy = FALSE, ...): return all rows from x where there are not matching values in y, keeping just columns from x

It's all here in great detail.

Selecting columns can be done by select(df,"column"). If that's not SQL-ish enough for you, then there's the sql() function, into which you can enter SQL code as-is, and it will do the operation you specified just like you were writing in R all along (for more information, please refer to the dplyr/databases vignette. For example, if applied correctly, sql("SELECT * FROM hflights") will select all the columns from the "hflights" dplyr table (a "tbl").

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dplyr is very good and performant. In addition to the other answers on it, here was/is its status as of

v0.1.3 (4/2014)

Per hadley's comments in that issue:

  • right_join(x,y) is the same as left_join(y,x) in terms of the rows, just the columns will be different orders. Easily worked around with select(new_column_order)
  • outer_join is basically union(left_join(x, y), right_join(x, y)) - i.e. preserve all rows in both data frames.
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In joining two data frames with ~1 million rows each, one with 2 columns and the other with ~20, I've surprisingly found merge(..., all.x = TRUE, all.y = TRUE) to be faster then dplyr::full_join(). This is with dplyr v0.4

Merge takes ~17 seconds, full_join takes ~65 seconds.

Some food for though, since I generally default to dplyr for manipulation tasks.

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