Summary: I would like to merge two tables by shared id key as all=true (full outer join) where instead of columns with the same names being set as var1.x var2.y, etc., they are merged as a single column where missing (NA) values in the left table are filled in by values from the right table (in addition to the standard behavior of merge, i.e., appending rows with distinct ids and columns with distinct names).


I would like to merge + update table1 with table2 based on a shared id key column such that:

1) If table1 and table2 have columns with the same name (other than id), the value in table1 is left alone if it exists and replaced by the value in table2 if the value in table1 is NA.

2) If table2 has columns that table1 does not have (different names), they are merged (by id).

3) If table1 has an id that does not match in table2, values for different name columns from table2 are NA

4) If table2 has an id that does not match in table1, it is added as a new row and the values for the different column names from table1 are NA.

3 & 4 are as with standard merge with all=TRUE.

I'm concerned that I have overthought the problem as I cannot find a straightforward way to do this with a merge or join that doesn't involve creating ifelse checks on every column. Real data has ~1000 columns, so would be incredibly long solution to do ifelse lookups on each one.

Reproducible reduced example:

table1  <- data.table(id  =c("id1", "id2", "id3", "id4", "id5", "id6"),
                      var1=c(1,2,3,4,5, 6),
                      var2=c("a", "b", NA, "d", NA, "f"),
                      var3=c(NA, 12, 13, 14, 15, 16));

table2  <- data.table(id  =c("id1", "id2", "id3", "id4", "id5", "id8"),
                      var1=c(1,2,NA,4,5, 8),
                      var2=c(NA, "b", "c", "d", "e", "h"),
                      var4=c("foo", "bar", "oof", "rab", NA, "sna"));

desired <- data.table(id=c("id1", "id2", "id3", "id4", "id5", "id6", "id8"),
                      var1=c(1,2,3,4,5, 6, 8),
                      var2=c("a", "b", "c", "d", "e", "f", "h"),
                      var3=c(NA, 12, 13, 14, 15, 16, NA),
                      var4=c("foo", "bar", "oof", "rab", NA, NA, "sna"));

    id var1 var2 var3
1: id1    1    a   NA
2: id2    2    b   12
3: id3    3   NA   13
4: id4    4    d   14
5: id5    5    e   15
6: id6    6    f   16

    id var1 var2 var4
1: id1    1    a  foo
2: id2    2    b  bar
3: id3   NA    c  oof
4: id4    4    d  rab
5: id5    5    e   NA
6: id8    8    h  sna

    id var1 var2 var3 var4
1: id1    1    a   NA  foo
2: id2    2    b   12  bar
3: id3    3    c   13  oof
4: id4    4    d   14  rab
5: id5    5    e   15   NA
6: id6    6    f   16   NA
7: id8    8    h   NA  sna

Explanation of desired output:

  1. For column var1, table1 had all the values, so it is left alone and the NA for id3 in table2 is ignored (note that this doesn't include the row merge for different ids described below).

  2. For column var2, table was missing the value indexed by id3, so it is updated from table2 (note that this doesn't include the row merge for different ids described below).

  3. For column var3, there is no matching column in table2, so it is kept as is.

  4. For column var4, there was no column var4 in table1, so it is merged from table2 by id key variable.

  5. For row with id6 in table1, there is no matching id6 in table2, so the value for column var4 that is only in table2 is NA in the desired output for row id6.

  6. For row with id8 in table2 there is no matching id8 in table1, so the value for column var3 that is only in table1 is NA in the desired output for row id8.

Surely there is a straightforward way to do this with data.table? Efficient solutions are particularly welcome given the size of the real data. The datamerge package apparently used to do exactly this, but it isn't on CRAN anymore and I can't get it to work on R3.2.3 from zip. Has another package stepped up for this task? There are many other threads that focus on solving this for a one or a couple of columns with known names, but for large number of columns, they don't seem practical.

  • 1
    The set of ids is the same in both tables and each id only appears on one row?
    – Frank
    Apr 1, 2016 at 19:47
  • @Frank Good question. Not the same in both tables, yes appears on one row in each. Updating reduced example to include that information. Thanks for catching that! Apr 1, 2016 at 21:09
  • I think your stipulation #6 has a typo. Should say "only in table2"
    – Frank
    Apr 1, 2016 at 21:31
  • @Frank I wasn't very clear with 5 & 6. I've clarified it now. Apr 1, 2016 at 21:44
  • @MichaelChirico I've now clarified #1 & #2 to explain that I'm talking just about the update/replace, not the merge (with rows with new ids) that are explained in parts 5 & 6. Apr 2, 2016 at 17:11

3 Answers 3


Here's one way:

com.cols    = setdiff(intersect(names(table1), names(table2)), "id")
com.cols.x  = paste0(com.cols, ".x")
com.cols.y  = paste0(com.cols, ".y")

# create combined table
DT = setkey(merge(table1, table2, by="id", all=TRUE), NULL)

# edit common columns where NAs are present
for (j in seq_along(com.cols)) 
  DT[is.na(get(com.cols.x[j])), (com.cols.x[j]) := get(com.cols.y[j])]

# remove unneeded columns
DT[, (com.cols.y) := NULL]

# rename kept columns
setnames(DT, com.cols.x, com.cols)

identical(DT, desired) # TRUE

It's rather messy to create and work with all these column-names vectors.

Regarding the original question...

Here's another way (without importing new rows from table2, as in the original post):

com.cols    = setdiff(intersect(names(table1), names(table2)), "id")
i.com.cols  = paste0("i.", com.cols)
new.cols    = c(i.com.cols, setdiff(names(table2), c("id", com.cols)))

# grab columns from table2
table1[table2, (new.cols) := mget(new.cols), on="id"]

# edit common columns where NAs are present
for (j in seq_along(com.cols)) 
  table1[is.na(get(com.cols[j])), (com.cols[j]) := get(i.com.cols[j])]

# remove unneeded columns
table1[, (i.com.cols) := NULL]

This way all steps are modifications of table1 by reference.

  • 2
    Very nice. Is there a reason you do table1[table2, (new.cols) := mget(new.cols), on="id"] rather than table1[table2, on="id"] ? Apr 1, 2016 at 20:18
  • 4
    @JoshO'Brien Thanks. This way, I don't have to create a new table; I'm just adding column pointers to the existing table.
    – Frank
    Apr 1, 2016 at 20:18

Here's another option that avoids explicitly adding the i. columns to the original table:

com.cols    = setdiff(intersect(names(table1), names(table2)), "id")
i.com.cols  = paste0("i.", com.cols)
# I'm using the same var names as Frank, but new.cols is strictly the new ones here
new.cols    = setdiff(names(table2), names(table1))

# this is easy - the previously absent cols
table1[table2, (new.cols) := mget(new.cols), on = 'id']

# now for the ones that need updating
table1[table2, on = 'id',
       (com.cols) := Map(function(col, i.col) pmin(col, i.col, na.rm = T),
                         mget(com.cols), mget(i.com.cols))]

I have no idea which option is faster - OP can check that.

  • 1
    pmin has to be faster, than the previous mapply version, but I'm fairly certain Frank's method is going to be faster
    – eddi
    Apr 1, 2016 at 20:39
  • 1
    I guess pmin will behave strangely for factors (since their min is not well-defined), but I guess similar factor-related problems apply to all the answers. (It's not clear the range of columns the OP might have in those hundreds and hundreds of cols.)
    – Frank
    Apr 1, 2016 at 20:51

EDIT: Quick adjustment

Do this first to get all the necessary rows:

table1 <- table1[.(id = union(id, table2$id)), on = "id"]

I don't like mget, so I propose the following:

in_common <- parse(text=setdiff(intersect(names(table1), names(table2)), "id"))

for (ii in in_common)
         as.character(ii) :=
           table2[.SD, eval(ii), on = "id"]]

The new columns are easy:

new_cols <- setdiff(names(table2), names(table1))

for (jj in new_cols)
  table1[table2, (jj) := eval(parse(text = jj)), on = "id"]

I suppose it's even faster to do something like:

in_common_c <- setdiff(intersect(names(table1), names(table2)), "id"))
in_common_q <- parse(text=in_common_c)

for (ii in seq_along(in_common_q))
         in_common_c[ii] :=
           table2[.SD, eval(in_common_q[ii]), on = "id"]]

But I hope the difference is marginal.

  • 1
    I don't like mget too, but I prefer using language objects, kind of as.call(c(list(as.name(":="), new_cols), lapply(.))). I also don't like parse even more than mget :P
    – jangorecki
    Apr 1, 2016 at 20:59

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