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In R 2.15.0 and data.table 1.8.9:

d = data.table(a = 1:5, value = 2:6, key = "a")

d[J(3), value]
#   a value
#   3     4

d[J(3)][, value]
#   4

I expected both to produce the same output (the 2nd one) and I believe they should.

In the interest of clearing up that this is not a J syntax issue, same expectation applies to the following (identical to the above) expressions:

t = data.table(a = 3, key = "a")
d[t, value]
d[t][, value]

I would expect both of the above to return the exact same output.

So let me rephrase the question - why is (data.table designed so that) the key column printed out automatically in d[t, value]?

Update (based on answers and comments below): Thanks @Arun et al., I understand the design-why now. The reason the above prints the key is because there is a hidden by present every time you do a data.table merge via the X[Y] syntax, and that by is by the key. The reason it's designed this way seems to be the following - since the by operation has to be performed when merging, one might as well take advantage of that and not do another by if you are going to do that by the key of the merge.

Now that said, I believe that's a syntax design flaw. The way I read data.table syntax d[i, j, by = b] is

take d, apply the i operation (be that subsetting or merging or whatnot), and then do the j expression "by" b

The by-without-by breaks this reading and introduces cases one has to think about specifically (am I merging on i, is by just the key of the merge, etc). I believe this should be the job of the data.table - the commendable effort to make data.table faster in one particular case of the merge, when the by is equal to the key, should be done in an alternative way (e.g. by checking internally if the by expression is actually the key of the merge).

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what it does now; also fwiw, d[J(3), value := 10] works as expected –  eddi Apr 18 '13 at 21:21
    
huh? I don't think we understand each other. I think (in this case) d[3, value] and d[J(3), value] should produce the same result. –  eddi Apr 18 '13 at 21:24
5  
can we please change the title of this question. The behavior is 100% expected and often leveraged. –  Ricardo Saporta Apr 18 '13 at 21:58
1  
@Arun imagine I write a function fancy_sum(x, y), that would compute the sum of x and y normally, except when x is equal to 10, in which case it would multiply. Imagine this is also documented behavior, called product-instead-of-sum. While a documented syntax design choice, I would call that a clear syntax design flaw. –  eddi Apr 19 '13 at 12:36
    
@Arun, again, please see r-forge.r-project.org/tracker/… –  eddi Apr 19 '13 at 16:32

4 Answers 4

Edit number Infinity: Faq 1.12 exactly answers your question: (Also useful/relevant is FAQ 1.13, not pasted here).

1.12 What is the difference between X[Y] and merge(X,Y)?
X[Y] is a join, looking up X's rows using Y (or Y's key if it has one) as an index. Y[X] is a join, looking up Y's rows using X (or X's key if it has one) as an index. merge(X,Y)1 does both ways at the same time. The number of rows of X[Y] and Y[X] usually dier; whereas the number of rows returned by merge(X,Y) and merge(Y,X) is the same. BUT that misses the main point. Most tasks require something to be done on the data after a join or merge. Why merge all the columns of data, only to use a small subset of them afterwards?
You may suggest merge(X[,ColsNeeded1],Y[,ColsNeeded2]), but that takes copies of the subsets of data, and it requires the programmer to work out which columns are needed. X[Y,j] in data.table does all that in one step for you. When you write X[Y,sum(foo*bar)], data.table automatically inspects the j expression to see which columns it uses. It will only subset those columns only; the others are ignored. Memory is only created for the columns the j uses, and Y columns enjoy standard R recycling rules within the context of each group. Let's say foo is in X, and bar is in Y (along with 20 other columns in Y). Isn't X[Y,sum(foo*bar)] quicker to program and quicker to run than a merge followed by a subset?


Old answer which did nothing to answer the OP's question (from OP's comment), retained here because I believe it does).

When you give a value for j like d[, 4] or d[, value] in data.table, the j is evaluated as an expression. From the data.table FAQ 1.1 on accessing DT[, 5] (the very first FAQ) :

Because, by default, unlike a data.frame, the 2nd argument is an expression which is evaluated within the scope of DT. 5 evaluates to 5.

The first thing, therefore, to understand is, in your case:

d[, value] # produces a "vector"
# [1] 2 3 4 5 6

This is not different when the query for i is a basic indexing like:

d[3, value] # produces a vector of length 1
# [1] 4

However, this is different when i is by itself a data.table. From data.table introduction (page 6):

d[J(3)] # is equivalent to d[data.table(a = 3)]

Here, you are performing a join. If you just do d[J(3)] then you'd get all columns corresponding to that join. If you do,

d[J(3), value] # which is equivalent to d[J(3), list(value)]

Since you say this answer does nothing to answer your question, I'll point where the answer to your "rephrased" question, I believe, lies: ---> then you'd get just that column, but since you're performing a join, the key column will also be output'd (as it's a join between two tables based on the key column).


Edit: Following your 2nd edit, If your question is why so?, then I'd reluctantly (or rather ignorantly) answer, Matthew Dowle designed so to differentiate between a data.table join-based-subset and a index-based-subsetting operation.

Your second syntax is equivalent to:

d[J(3)][, value] # is equivalent to:

dd <- d[J(3)]
dd[, value]

where, again, in dd[, value], j is evaluated as an expression and therefore you get a vector.


To answer your 3rd modified question: for the 3rd time, it's because it is a JOIN between two data.tables based on the key column. If I join two data.tables, I'd expect a data.table

From data.table introduction, once again:

Passing a data.table into a data.table subset is analogous to A[B] syntax in base R where A is a matrix and B is a 2-column matrix. In fact, the A[B] syntax in base R inspired the data.table package.

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Your comments helped me pinpoint where exactly my expectation breaks, so see OP edit. As is, this answer does nothing for my question. –  eddi Apr 18 '13 at 22:02
    
Feel free to down-vote then. If anyone else who understands your question and my answer tells me that this answer does nothing to help your question, then I'd be happy to delete it. –  Arun Apr 18 '13 at 22:06
    
@eddi I think this actually answers your question rather precisely. –  joran Apr 18 '13 at 22:08
6  
@Arun +100 for this! :-) –  Matt Dowle Apr 19 '13 at 11:19
1  
@eddi, alright, I'll revert the edit and leave it as it is. –  Arun Mar 13 at 16:52

I agree with Arun's answer. Here's another wording: After you do a join, you often will use the join column as a reference or as an input to further transformation. So you keep it, and you have an option to discard it with the (more roundabout) double [ syntax. From a design perspective, it is easier to keep frequently relevant information and then discard when desired, than to discard early and risk losing data that is difficult to reconstruct.

Another reason that you'd want to keep the join column is that you can perform aggregate operations at the same time as you perform a join (the by without by). For example, the results here are much clearer by including the join column:

d <- data.table(a=rep.int(1:3,2),value=2:7,other=100:105,key="a")
d[J(1:3),mean(value)]
#   a  V1
#1: 1 3.5
#2: 2 4.5
#3: 3 5.5
share|improve this answer
    
I'm going to have think about this, but atm I don't quite understand the need for d[J(1:3), mean(value)] syntax for getting that result vs what I would consider much more palatable option of using d[J(1:3), mean(value), by = a] syntax (I actually haven't checked if this works, but I would want it to work this way). I guess I don't understand the need (and want) for the by without by syntax, as in my case all it does is just confuse with very little apparent benefit. –  eddi Apr 19 '13 at 0:31
1  
As @Simon101 quotes Prof. Ripley, "Your preferences are irrelevant. It's the documentation that counts" (and that does not fail to give explainations). That said, MatthewDowle is very nice and receptive and he may play along. I'm perfectly happy the way it is. –  Arun Apr 19 '13 at 6:54
1  
@eddi The motivation for by-without-by is speed when you have a subset of known groups. Say you have 1000 groups (each with 1000 rows and 100 columns), but you only want the mean of one column for only 6 groups. A subset of all columns for those 6 groups, followed by a by would be slower than a direct by-without-by with fancy j column usage inspection. See FAQ 1.12 for more info on the thinking here. –  Matt Dowle Apr 19 '13 at 11:10
    
@MatthewDowle I have nothing against the concept of by without by, my complaint is against its syntax. I believe the syntax should be "normal" by, and all of the magic should happen internally. –  eddi Apr 19 '13 at 12:41
    
@eddi I see where you're coming from now, I think. In my case what I do a lot is DT[myids,mean(stuff)] or DT[myids,list(mean(stuff),sd(stuff),...)]. I like data.table giving me the aggregates for each id automatically, because that's what I need most of the time. I think I'd find having to set by= as well too onerous. –  Matt Dowle Apr 19 '13 at 14:02

This is not unexpected behaviour, it is documented behaviour. Arun has done a good job of explaining and demonstrating in the FAQ where this is clearly documented.

there is a feature request FR 1757 that proposes the use of the drop argument in this case

When implemented, the behaviour you want might be coded

d = data.table(a = 1:5, value = 2:6, key = "a")

d[J(3), value, drop = TRUE]
share|improve this answer
    
thanks, I understand the design why now (which is, if you support by-without-by, then that's a hidden by, and so the by column should be there), and so far the conclusion of all this (for me) seems to be that by-without-by is a bad syntax feature to have (as opposed to manually specifying a by if you want to and default behavior of X[Y,j] being the same as X[Y][,j]). I'm very open to be convinced otherwise by some examples. –  eddi Apr 19 '13 at 0:39
1  
by-without-by is significantly faster than by or even a keyed by. I think an extra couple of key strokes is worth it. If you want to have a long drawn out discussion, move to the data.table mailing list. If you want to comment on the feature request for drop = TRUE, do so. –  mnel Apr 19 '13 at 0:48
    
then that feature should come as an extra option, but not at a cost to normal syntax and understanding; anyway, my original question is answered I guess; fwiw another inconsistency in this by-without-by business is that the hidden by column is actually unavailable in the j expression, so that d[J(3), a] fails –  eddi Apr 19 '13 at 1:06
2  
by-without-by is normal data.table syntax . You could put in a feature request to remove by-without-by, but I think the problem is your understanding and expectations, which (clearly) are out of step with the data.table author (and the majority of users). d[.(3), a] is an interesting case, I'm not sure how that gets the result it does. If you name within i it (can) work d[.(a=3), a]. Perhaps this is worth a question by itself (on the mailing list perhaps) –  mnel Apr 19 '13 at 1:18
1  
@mnel +1 for FR#2693. Will try and implement that. –  Matt Dowle Apr 19 '13 at 11:01
up vote 3 down vote accepted

As of data.table 1.9.3, the default behavior has been changed and the examples below produce the same result. To get the by-without-by result, one now has to specify an explicit by=.EACHI:

d = data.table(a = 1:5, value = 2:6, key = "a")

d[J(3), value]
#[1] 4

d[J(3), value, by = .EACHI]
#   a value
#1: 3     4

And here's a slightly more complicated example, illustrating the difference:

d = data.table(a = 1:2, b = 1:6, key = 'a')
#   a b
#1: 1 1
#2: 1 3
#3: 1 5
#4: 2 2
#5: 2 4
#6: 2 6

# normal join
d[J(c(1,2)), sum(b)]
#[1] 21

# join with a by-without-by, or by-each-i
d[J(c(1,2)), sum(b), by = .EACHI]
#   a V1
#1: 1  9
#2: 2 12

# and a more complicated example:
d[J(c(1,2,1)), sum(b), by = .EACHI]
#   a V1
#1: 1  9
#2: 2 12
#3: 1  9
share|improve this answer
    
Since it's very likely that this post'll be the place to be looked at for this change, it'd make sense answer in detail. I'll also try to edit when I've some time. –  Arun Mar 14 at 15:12
    
@Arun I added a more complicated example, obviously feel free to edit –  eddi Mar 14 at 15:19
1  
@Arun This change has been a major disrupt for me. I agree that from a new user perspective this might be more intuitive, but, wouldn't it be better if by = .EACHI is kept as the default for backwards compatibility? At least, it would be very important to give a big heads up to all the other packages that depend on data.table –  Juancentro Jun 4 at 21:41

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