16

First I want to create an empty datatable with column names but it fails:

data <- data.table(va, vb, vc)

> Error in data.table(va, vb, vc) : object 'va' not found

Second I want to append datatable to it but it fails too :

data2 <- data.table(va=c(-1,0,1), vb=c(-1,0,1), vc=c(-1,0,1))
data2
   va vb vc
1: -1 -1 -1
2:  0  0  0
3:  1  1  1
merge(data2,data2)

> Error in merge.data.table(data2, data2) : 
      Can not match keys in x and y to automatically determine appropriate `by` parameter. Please set `by` value explicitly.

Apparently the function can't identify the by parameters with two identical datatables. Any idea?

  • "object va" not found is because R assumes it is a variable name and there is no existing variable in your workspace named va – R Yoda May 22 '16 at 15:51
  • 1
    To create an empty data.table use (assuming all columns numeric): data=data.table(va=numeric(), vb=numeric(), vc=numeric()) – R Yoda May 22 '16 at 15:54
  • Dynamically growing things in a loop (which is what it sounds like you're doing) is a bad idea in R. – Frank May 22 '16 at 20:02
  • This question is obsolete, merge(data2,data2) defaults to all (shared) keys just fine in data.table v1.11.x. I guess this was not implemented back in v1.9.6 (2016). – smci Apr 10 at 6:29
20

To create an empty data.table use (assuming all columns are numeric):

library(data.table)    
data <- data.table(va=numeric(), vb=numeric(), vc=numeric())
data

which results in:

> data
Empty data.table (0 rows) of 3 cols: va,vb,vc

To do a self join over all columns use (even though the result is the same ;-):

data2 <- data.table(va=c(-1,0,1), vb=c(-1,0,1), vc=c(-1,0,1))
data2
merge(data2, data2,by=names(data2))

The reason why you have to specify the by parameter is the documented semantics of merge:

by:

A vector of shared column names in x and y to merge on. This defaults to the shared key columns between the two tables. If y has no key columns, this defaults to the key of x.

Since you don't have set any keys the "join" columns to merge the data tables are unclear.

There is no implicit "use all column" semantics if you omit the by parameter (as cited above the shared key columns are taken).

To append all rows of a data.table to another one you use rbind ("row bind") instead of merge:

data3 <- rbind(data2, data2)
data3

Which results in:

> data3
   va vb vc
1: -1 -1 -1
2:  0  0  0
3:  1  1  1
4: -1 -1 -1
5:  0  0  0
6:  1  1  1
  • 1
    In 1.11.x, merge now uses shared key columns, where possible. "There is no implicit "use all column" semantics if you omit the merge(..., by) parameter" is no longer true; I guess it was not implemented back in 2016 (v1.9.6). Could you correct your answer? – smci Apr 10 at 6:21
  • Done, thanks for clarifying this! – R Yoda May 10 at 7:09
15

To create an empty data.table, you can start from an empty matrix:

library(data.table)
data <- setNames(data.table(matrix(nrow = 0, ncol = 3)), c("va", "vb", "vc"))
data
Empty data.table (0 rows) of 3 cols: va,vb,vc

Then you can use rbindlist to append new data.table to it:

data2=data.table(va=c(-1,0,1), vb=c(-1,0,1), vc=c(-1,0,1))
data2
   va vb vc
1: -1 -1 -1
2:  0  0  0
3:  1  1  1
rbindlist(list(data, data2))
   va vb vc
1: -1 -1 -1
2:  0  0  0
3:  1  1  1

Or even simpler, the following also works:

data <- data.table()
data <- rbindlist(list(data, data2))
data
   va vb vc
1: -1 -1 -1
2:  0  0  0
3:  1  1  1
2

Another way to create an empty data.table with defined column names but without having to define data types:

data <- data.table(1)[,`:=`(c("va", "vb", "vc"),NA)][,V1:=NULL][.0]

This does the following

  1. data.table(1): Create a non-NULL data.table to which you can add columns
    • Has a one column V1 with one row. Value 1
    • You can use any value (other than NULL) in the place of 1
  2. [,`:=`(c("va", "vb", "vc"),NA)]: Add columns va, vb, vc
    • Now has four columns (starting with V1) and one row. value 1,NA,NA,NA
    • Any non-NULL value can be substituted for NA
  3. [,V1:=NULL]: Remove the V1 column
  4. [.0]: Return a blank row
    • You can actually use [.n] where n is any integer.

If you don't like the black magic of [.0] you can also use

data <- data.table(1)[,`:=`(c("va", "vb", "vc"),NA)][,V1:=NULL][!is.na(va)]

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