# Weighted row average in time series join

Hello I'm looking for the cleanest/fastest way to solve the following problem:

My setup looks like this

``````library(data.table)
set.seed(1234)
DT1 <- data.table(replicate(12,runif(5)))
setnames(DT1,LETTERS[1:12])
DT1[,time:=100]
DT2 <- data.table(time=rep(100,12), grp=rep(c("X","Y","Z"),each=4),
sub=LETTERS[1:12], weight=sample(1:100,12))

options(digits=2)
DT1
A      B    C    D    E     F    G    H    I    J     K    L time
1: 0.11 0.6403 0.69 0.84 0.32 0.811 0.46 0.76 0.55 0.50 0.074 0.50  100
2: 0.62 0.0095 0.54 0.29 0.30 0.526 0.27 0.20 0.65 0.68 0.310 0.49  100
3: 0.61 0.2326 0.28 0.27 0.16 0.915 0.30 0.26 0.31 0.48 0.717 0.75  100
4: 0.62 0.6661 0.92 0.19 0.04 0.831 0.51 0.99 0.62 0.24 0.505 0.17  100
5: 0.86 0.5143 0.29 0.23 0.22 0.046 0.18 0.81 0.33 0.77 0.153 0.85  100

> DT2
time grp sub weight
1:  100   X   A     87
2:  100   X   B      5
3:  100   X   C     32
4:  100   X   D      2
5:  100   Y   E     23
6:  100   Y   F     68
7:  100   Y   G     29
8:  100   Y   H     48
9:  100   Z   I     99
10:  100   Z   J     52
11:  100   Z   K     11
12:  100   Z   L     80
``````

I want to compute a weighted average (per row) of the columns of DT1 by referencing the groups, subclasses & weights from DT2, while joining per time point.

E.g. so DT1 then gets columns X,Y & Z bound to it, so in this case the column X of the first row is 87*0.11 + 5*0.64 + 32*0.69 + 2*0.84 / (87 + 5 + 32 + 2)

There are millions of rows in DT1 with different time points, so memory might be a limiting factor though

Any advice would be much appreciated!

-

Something like this perhaps:

``````library(reshape2)

setkey(DT2, time, sub)

DT2[melt(DT1, id.var = 'time')[, row := 1:.N, by = list(time, variable)]][,
sum(weight * value) / sum(weight), by = list(time, grp, row)]
#    time grp row   V1
# 1:  100   X   1 0.29
# 2:  100   X   2 0.57
# 3:  100   X   3 0.51
# 4:  100   X   4 0.69
# 5:  100   X   5 0.69
# 6:  100   Y   1 0.67
# 7:  100   Y   2 0.36
# 8:  100   Y   3 0.52
# 9:  100   Y   4 0.71
#10:  100   Y   5 0.31
#11:  100   Z   1 0.50
#12:  100   Z   2 0.59
#13:  100   Z   3 0.51
#14:  100   Z   4 0.39
#15:  100   Z   5 0.59
``````

You can also reshape the above result if you like:

``````# assuming you called the above table "res"
dcast.data.table(res, row + time ~ grp)
#Using 'V1' as value column. Use 'value.var' to override
#   row time    X    Y    Z
#1:   1  100 0.29 0.67 0.50
#2:   2  100 0.57 0.36 0.59
#3:   3  100 0.51 0.52 0.51
#4:   4  100 0.69 0.71 0.39
#5:   5  100 0.69 0.31 0.59
``````
-
perfect, thanks a lot! curious whether this DT[,...][,...] technique for processing each row separately makes use of the data.table optimisations at all, or it's just as fast to use data.frame? –  user3657159 May 21 '14 at 15:00
@user3657159 the above expressions won't work with data.frames, and the analogous operations in base will be much slower –  eddi May 21 '14 at 15:10