# Merge Two Lists in R

I have two lists

``````first = list(a = 1, b = 2, c = 3)
second = list(a = 2, b = 3, c = 4)
``````

I want to merge these two lists so the final product is

``````\$a
[1] 1 2

\$b
[1] 2 3

\$c
[1] 3 4
``````

Is there a simple function to do this?

• Mar 1 '12 at 16:10
• Jan 31 '20 at 0:35

If lists always have the same structure, as in the example, then a simpler solution is

``````mapply(c, first, second, SIMPLIFY=FALSE)
``````
• This is equivalent to `Map(c, first, second)`, if anyone cares. Jul 17 '15 at 21:56
• I'm just learning R, why does Map (and mapply) have 'c' as the first parameter? Shouldn't the parameters passed in simply be the two lists? Jun 1 '16 at 15:59
• 'c' is the name of a primitive function that creates lists. Typing c in R without the trailing parens shows 'function (..., recursive = FALSE) .Primitive("c")' So this cliche is mapping the 'c' function over the contents of first and second. Jun 28 '16 at 16:29
• @Masterfool mapply() is a tick more efficient, since `Map()` contains `mapply()` Jul 27 '17 at 22:14
• how seriously do we need to worry about the following mapply warning: 'longer argument not a multiple of length of shorter' Sep 26 '17 at 19:42

This is a very simple adaptation of the modifyList function by Sarkar. Because it is recursive, it will handle more complex situations than `mapply` would, and it will handle mismatched name situations by ignoring the items in 'second' that are not in 'first'.

``````appendList <- function (x, val)
{
stopifnot(is.list(x), is.list(val))
xnames <- names(x)
for (v in names(val)) {
x[[v]] <- if (v %in% xnames && is.list(x[[v]]) && is.list(val[[v]]))
appendList(x[[v]], val[[v]])
else c(x[[v]], val[[v]])
}
x
}

> appendList(first,second)
\$a
[1] 1 2

\$b
[1] 2 3

\$c
[1] 3 4
``````
• This is the one that helped me with a more complicated list. The other options didn't seem to handle elements under other elements. Dec 16 '21 at 21:04
• Yes. IIRC that was the beauty of Sarkar's original that I appreciated and sought to give proper credit. Dec 17 '21 at 3:12

Here are two options, the first:

``````both <- list(first, second)
n <- unique(unlist(lapply(both, names)))
names(n) <- n
lapply(n, function(ni) unlist(lapply(both, `[[`, ni)))
``````

and the second, which works only if they have the same structure:

``````apply(cbind(first, second),1,function(x) unname(unlist(x)))
``````

Both give the desired result.

• I don't think your second one works correctly as I get a matrix design instead of a list of vectors. Mar 1 '12 at 17:16
• You are right; `apply` simplifies it if it can. It does work if it can't simplify, such as if `first\$c <- c(4,5)`, for example. Mar 1 '12 at 18:52
• the first one gives me a list of length=0. is names supposed to be defined as something? Sep 26 '17 at 19:44
• do your lists have names? Sep 27 '17 at 15:20

Here's some code that I ended up writing, based upon @Andrei's answer but without the elegancy/simplicity. The advantage is that it allows a more complex recursive merge and also differs between elements that should be connected with `rbind` and those that are just connected with `c`:

``````# Decided to move this outside the mapply, not sure this is
# that important for speed but I imagine redefining the function
# might be somewhat time-consuming
mergeLists_internal <- function(o_element, n_element){
if (is.list(n_element)){
# Fill in non-existant element with NA elements
if (length(n_element) != length(o_element)){
n_unique <- names(n_element)[! names(n_element) %in% names(o_element)]
if (length(n_unique) > 0){
for (n in n_unique){
if (is.matrix(n_element[[n]])){
o_element[[n]] <- matrix(NA,
nrow=nrow(n_element[[n]]),
ncol=ncol(n_element[[n]]))
}else{
o_element[[n]] <- rep(NA,
times=length(n_element[[n]]))
}
}
}

o_unique <- names(o_element)[! names(o_element) %in% names(n_element)]
if (length(o_unique) > 0){
for (n in o_unique){
if (is.matrix(n_element[[n]])){
n_element[[n]] <- matrix(NA,
nrow=nrow(o_element[[n]]),
ncol=ncol(o_element[[n]]))
}else{
n_element[[n]] <- rep(NA,
times=length(o_element[[n]]))
}
}
}
}

# Now merge the two lists
return(mergeLists(o_element,
n_element))

}
if(length(n_element)>1){
new_cols <- ifelse(is.matrix(n_element), ncol(n_element), length(n_element))
old_cols <- ifelse(is.matrix(o_element), ncol(o_element), length(o_element))
if (new_cols != old_cols)
stop("Your length doesn't match on the elements,",
" new element (", new_cols , ") !=",
" old element (", old_cols , ")")
}

return(rbind(o_element,
n_element,
deparse.level=0))
return(c(o_element,
n_element))
}
mergeLists <- function(old, new){
if (is.null(old))
return (new)

m <- mapply(mergeLists_internal, old, new, SIMPLIFY=FALSE)
return(m)
}
``````

Here's my example:

``````v1 <- list("a"=c(1,2), b="test 1", sublist=list(one=20:21, two=21:22))
v2 <- list("a"=c(3,4), b="test 2", sublist=list(one=10:11, two=11:12, three=1:2))
mergeLists(v1, v2)
``````

This results in:

``````\$a
[,1] [,2]
[1,]    1    2
[2,]    3    4

\$b
[1] "test 1" "test 2"

\$sublist
\$sublist\$one
[,1] [,2]
[1,]   20   21
[2,]   10   11

\$sublist\$two
[,1] [,2]
[1,]   21   22
[2,]   11   12

\$sublist\$three
[,1] [,2]
[1,]   NA   NA
[2,]    1    2
``````

Yeah, I know - perhaps not the most logical merge but I have a complex parallel loop that I had to generate a more customized `.combine` function for, and therefore I wrote this monster :-)

In general one could,

``````merge_list <- function(...) by(v<-unlist(c(...)),names(v),base::c)
``````

Note that the `by()` solution returns an `attribute`d list, so it will print differently, but will still be a list. But you can get rid of the attributes with `attr(x,"_attribute.name_")<-NULL`. You can probably also use `aggregate()`.

``````merged = map(names(first), ~c(first[[.x]], second[[.x]])
merged = set_names(merged, names(first))
``````

Using purrr. Also solves the problem of your lists not being in order.

Following @Aaron left Stack Overflow and @Theo answer, the merged list's elements are in form of vector `c`. But if you want to bind rows and columns use `rbind` and `cbind`.

``````merged = map(names(first), ~rbind(first[[.x]], second[[.x]])
merged = set_names(merged, names(first))
``````

Using dplyr, I found that this line works for named lists using the same names:

``````as.list(bind_rows(first, second))
``````
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