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I am wondering how do I rbindlist data tables with different number of columns, and filling up empty rows with NAs like rbind.fill

 DT1 = data.table(A=1:3)
 DT2 = data.table(A=4:5,B=letters[4:5])
 l = list(DT1,DT2)
 rbindlist(l)
  Error in rbindlist(l) : 
   Item 2 has 2 columns, inconsistent with item 1 which has 1 columns

What I want to get is

   A B
1: 1 NA
2: 2 NA
3: 3 NA
4: 4 d
5: 5 e
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Check out rbind.fill {plyr} –  Codoremifa Oct 25 '13 at 7:55
    
In this case you can use merge(DT1, DT2, by="A", all=TRUE). But that only does the same as rbind because A is unique. Otherwise, you can still use merge if you add a unique id in each data.table. –  shadow Oct 25 '13 at 8:48
1  
The reason I posted this question was because I read that rbindlist is much faster than rbind. But perhaps rbind.fill is still the best way to do this. Also, isn't merge suppose to be very inefficient because it does a lot of checking? –  Wet Feet Oct 26 '13 at 10:40

1 Answer 1

This feature is now implemented in commit 1266 of v1.9.3. From NEWS:

o  'rbindlist' gains 'use.names' and 'fill' arguments and is now implemented 
   entirely in C. Closes #5249    
  -> use.names by default is FALSE for backwards compatibility (doesn't bind by 
     names by default)
  -> rbind(...) now just calls rbindlist() internally, except that 'use.names' 
     is TRUE by default, for compatibility with base (and backwards compatibility).
  -> fill by default is FALSE. If fill is TRUE, use.names has to be TRUE.
  -> At least one item of the input list has to have non-null column names.
  -> Duplicate columns are bound in the order of occurrence, like base.
  -> Attributes that might exist in individual items would be lost in the bound result.
  -> Columns are coerced to the highest SEXPTYPE, if they are different, if/when possible.
  -> And incredibly fast ;).
  -> Documentation updated in much detail. Closes DR #5158.

Check this post for benchmarks.


Examples:

1) Using fill argument of rbindlist:

DT1 <- data.table(x=1, y=2)
DT2 <- data.table(y=2, z=-1)

rbindlist(list(DT1, DT2), fill=TRUE)
#     x y  z
# 1:  1 2 NA
# 2: NA 2 -1

Note that when fill=TRUE, use.names should be TRUE.


2) Binding tables with duplicate names appropriately:

DT1 <- data.table(x=1, x=2, y=1, y=2)
DT2 <- data.table(y=3, y=-1, y=-2)

rbindlist(list(DT1, DT2), fill=TRUE)
#     x  x y  y  y
# 1:  1  2 1  2 NA
# 2: NA NA 3 -1 -2

3) It's not limited to just data.tables, but works on data.frames and lists as well:

DT1 <- data.table(x=1, y=2)
DT2 <- data.frame(y=2, z=-1)
DT3 <- list(z=10)

rbindlist(list(DT1,DT2,DT3), fill=TRUE)

#     x  y  z
# 1:  1  2 NA
# 2: NA  2 -1
# 3: NA NA 10

4) If you would like to bind just by names, you can set just use.names=TRUE, but not fill:

DT1 <- data.table(x=1, y=2)
DT2 <- data.table(y=1, x=2)

rbindlist(list(DT1,DT2), use.names=TRUE, fill=FALSE)
#    x y
# 1: 1 2
# 2: 2 1

DT1 <- data.table(x=1, y=2)
DT2 <- data.table(z=2, y=1)

# returns error when fill=FALSE but can't be bound without fill=TRUE
rbindlist(list(DT1, DT2), use.names=TRUE, fill=FALSE)
# Error in rbindlist(list(DT1, DT2), use.names = TRUE, fill = FALSE) : 
    # Answer requires 3 columns whereas one or more item(s) in the input 
    # list has only 2 columns. ...

5) The default is the same for backwards compatibility (use.names=FALSE, fill=FALSE):

DT1 <- data.table(x=1, y=2)
DT2 <- data.table(y=1, x=2)

rbindlist(list(DT1, DT2))

#    x y
# 1: 1 2
# 2: 1 2

HTH

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