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I want to add a new column to my data.table. This column should contain the sum of another column of all rows that satisfy a certain condition. An example: My data.table looks like this:

require(data.table)
DT <- data.table(n=c("a", "a", "a", "a", "a", "a", "b", "b", "b"),
             t=c(10, 20, 33, 40, 50, 22, 25, 34, 11),
             v=c(20, 15, 16, 17, 11, 12, 20, 22, 10)
             )
DT
   n  t  v
1: a 10 20
2: a 20 15
3: a 33 16
4: a 40 17
5: a 50 11
6: a 22 12
7: b 25 20
8: b 34 22
9: b 11 10

For every row x and every row i, where abs(t[i] - t[x]) <= 10, I want to calculate

foo = sum( v[i] * abs(t[i] - t[x]) )

In SQL I would solve this using a self join. In R I was able to do this using a for loop:

for (i in 1:nrow(DT))
    DT[i, foo:=DT[n==DT[i]$n & abs(t-DT[i]$t)<=10, sum(v * abs(t-DT[i]$t) )]]

DT
   n  t  v foo
1: a 10 20 150
2: a 20 15 224
3: a 33 16 119
4: a 40 17 222
5: a 50 11 170
6: a 22 12  30
7: b 25 20 198
8: b 34 22 180
9: b 11 10   0

Unfortunately I have to do this quite often and the table I work with is rather larger. The for-loop approach works but is too slow. I played around with the sqldf package, with no real breakthrough. I would love to do this using some data.table magic and there I need your help :-). I think what is needed is some kind of self join on the condition that the difference of the t values is smaller then the threshold.

Follow up: I have a follow up question: In my application this join is done over and over again. The v's change, but the t's and the n's are always the same. So I am thinking about somehow storing which rows belong together. Any ideas how to do this in a clever way?

share|improve this question
    
from your output, it looks like you also have a condition i != x is that correct? –  Ricardo Saporta Feb 20 '13 at 16:19
    
No. For row 9 foo=0 because the term abs(t-DT[i]$t)==0. But the i!=x should not be excluded, since the calculation in my application is a bit more complicated as in this example and I need row x in there. –  uuazed Feb 20 '13 at 16:26

2 Answers 2

up vote 5 down vote accepted

Try the following:

unique(merge(DT, DT, by="n")[abs(t.x - t.y) <= 10, list(n, sum(v.x * abs(t.x - t.y))), by=list(t.x, v.x)])

Breakdown for the above line:

You can merge a table with itself, the output will also be a data.table. Notice that the column names will be given a suffix of .x and .y

merge(DT, DT, by="n")

... you can just filter and calculate as with any DT

# this will give you your desired rows
[abs(t.x - t.y), ]

# this is the expression you outlined
[ ... , sum(v.x * abs(t.x - t.y)) ]

# summing by t.x and v.x
[ ... , ... , by=list(t.x, v.x)]) ]

Then finally wrapping it all in unique to remove any duplicated rows.


UPDATE: this should be a comment but is too long

The line below is what matches your output. The only difference between this and the one at the top of this answer is the term v.y in sum(v.y * ...) however the by statement still uses v.x. Is that intentional?

unique(merge(DT, DT, by="n")[abs(t.x - t.y) <= 10, list(n, sum(v.y * abs(t.x - t.y))), by=list(t.x, v.x)])
share|improve this answer
    
Thanks! This is about 6 times faster as my for-loop-approach on the sample. I will try this on the real data now... –  uuazed Feb 20 '13 at 16:42
    
glad to help... interestingly, I am using v.x and it appears you may be using v.y Which one is your calculation expecting? –  Ricardo Saporta Feb 20 '13 at 16:45
    
Regarding the merge. You are using the standard merge function. A data.table merge like DT[DT] should be faster, right? –  uuazed Feb 20 '13 at 16:54
    
@uuazed, nope, the merge is merge.data.table –  Ricardo Saporta Feb 20 '13 at 17:37
    
My calculation is expecting the v.y. Thanks again for your answer! –  uuazed Feb 20 '13 at 17:44

Great question. This answer is just a taster really alongside Ricardo's answer.

Ideally we want to avoid the large cartesian self join for efficiency. Unfortunately range joins (FR#203) haven't been implemented yet. In the meantime, using very latest v1.8.7 (untested) :

setkey(DT,n,t)
DT[,from:=DT[.(n,t-10),which=TRUE,roll=-Inf,rollends=TRUE]]
DT[,to:=DT[.(n,t+10),which=TRUE,roll=+Inf,rollends=TRUE]]
DT[,foo:=0L]
for (i in 1:nrow(DT)) {
    s = seq.int(DT$from[i],DT$to[i])
    set(DT, i, "foo", DT[,sum(v[s]*abs(t[s]-t[i]))] )
}

Once FR#203 is done, the logic above would be built in, and it should become a one liner :

setkey(DT,n,t)
DT[.(n,.(t-10,t+10),t), foo:=sum(v*abs(t-i.t))]

The second column of the i table there is a 2-column column (indicating a between join). That should be fast because, as usual, j would be evaluated for each row of i without needing to create a huge cartesian self join table.

That's the current thinking, anyway.

share|improve this answer
    
I will try that once data.table v1.8.7 is released –  uuazed Feb 20 '13 at 17:42
    
Has FR#203 being implemented already? I have made the following question in SO and I think it would benefit from the proposal you have made. stackoverflow.com/questions/29100911/… –  Picarus Mar 18 at 0:54

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