# Splicing weighted index

I am having an issue with creating a splice for a weighted index. I have the following sample data:

``````a=(1:10)
b=(14:23)
c=rep(1,10)
wa=c(2,2,2,2,2,6,6,6,6,6)
wb=c(5,5,5,5,5,2,2,2,2,2)
wc=c(3,3,3,3,3,2,2,2,2,2)
z=data.frame(a,b,c,wa,wb,wc)
z\$ind=rowSums(z[,1:3]*z[,4:6])/rowSums(z[,4:6])
``````

Which returns the following data frame:

``````    a  b c wa wb wc  ind
1   1 14 1  2  5  3  7.5
2   2 15 1  2  5  3  8.2
3   3 16 1  2  5  3  8.9
4   4 17 1  2  5  3  9.6
5   5 18 1  2  5  3 10.3
6   6 19 1  6  2  2  7.6
7   7 20 1  6  2  2  8.4
8   8 21 1  6  2  2  9.2
9   9 22 1  6  2  2 10.0
10 10 23 1  6  2  2 10.8
``````

The weights (wa,wb,wc) have changed at record six. So I would like to splice the index at record six so that 7.6 becomes 11. I need to calculate the values (a,b,c) with the previous record's weights and divide that by 7.6. Then apply that to all following numbers until the weights change again. The following function allows me to find where one of my weights has changed:

``````changeWeight=function(x){
for(i in 2:NROW(z)) {
z\$test[i] <- if(z\$wa[i]-z\$wa[i-1]==0) 0 else 1
}
z
}
``````

It will return a value of one wherever the weight has changed like so:

``````    a  b c wa wb wc  ind test
1   1 14 1  2  5  3  7.5   NA
2   2 15 1  2  5  3  8.2    0
3   3 16 1  2  5  3  8.9    0
4   4 17 1  2  5  3  9.6    0
5   5 18 1  2  5  3 10.3    0
6   6 19 1  6  2  2  7.6    1
7   7 20 1  6  2  2  8.4    0
8   8 21 1  6  2  2  9.2    0
9   9 22 1  6  2  2 10.0    0
10 10 23 1  6  2  2 10.8    0
``````

Now I try to create the value I will multiply by in order to splice the index at record six. I tried the following:

``````spliceValue=function(x){
for(i in 2:NROW(z)){
z\$splice[i]=if(z\$test[i]==1&z\$splice[i-1]!=NA) (rowSums(z[i,1:3]*z[i-1,4:6])/rowSums(z[i-1,4:6]))/z\$ind[i] else z\$splice[i-1]
}
z
}
``````

But that returns this error:

``````Error in if (z\$test[i] == 1 & z\$splice[i - 1] != NA) z\$ind[i - 1]/z\$ind[i] else z\$splice[i -  :
argument is of length zero
``````

What I would like to get is this:

``````    a  b c wa wb wc  ind test   splice
1   1 14 1  2  5  3  7.5   NA       NA
2   2 15 1  2  5  3  8.2    0 0.000000
3   3 16 1  2  5  3  8.9    0 0.000000
4   4 17 1  2  5  3  9.6    0 0.000000
5   5 18 1  2  5  3 10.3    0 0.000000
6   6 19 1  6  2  2  7.6    1 1.447638
7   7 20 1  6  2  2  8.4    0 1.447638
8   8 21 1  6  2  2  9.2    0 1.447638
9   9 22 1  6  2  2 10.0    0 1.447638
10 10 23 1  6  2  2 10.8    0 1.447638
``````

Then I can multiply ind by splice and have a nice smooth index.

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Be careful with the `changeWeight` function. In which environment are you creating `z\$test`? In which environment would you like to have it? –  BenBarnes Mar 26 '12 at 6:58
I had deleted my comment about having `z\$plice[i-1]` in your `spliceValue` function, but that was an overly hasty delete. Define a column in `z` named `splice` before running ´spliceValue` and, in combination with the above comment, things should go more smoothly. –  BenBarnes Mar 26 '12 at 7:07
If the index has more than one weight change there is a method to splice it properly here. –  thequerist May 11 '12 at 12:54

Expanding the example to have more than one change in weights:

``````a=(1:15)
b=(14:28)
c=rep(1,15)
wa=c(2,2,2,2,2,6,6,6,6,6,5,5,5,5,5)
wb=c(5,5,5,5,5,2,2,2,2,2,6,6,6,6,6)
wc=c(3,3,3,3,3,2,2,2,2,2,3,3,3,3,3)
z=data.frame(a,b,c,wa,wb,wc)
z\$ind=rowSums(z[,1:3]*z[,4:6])/rowSums(z[,4:6])
``````

Here, I have changed the functions `changeWeight()` and `spliceValue()` to return vectors that can be added to the data. This does what you want for the expanded example and avoids the environment issues that might occur with the original functions.

``````changeWeight<-function(x){
test <- NA
for(i in 2:NROW(z)) {
test[i] <- if(z\$wa[i]-z\$wa[i-1]==0) 0 else 1
}
return(test)
}

z\$test<-changeWeight()
``````

The condition `z\$splice[i - 1]!=NA` seemed superfluous. If it's not, you should consider `!is.na(z\$splice[i - 1])` instead.

``````spliceValue <- function(x) {
splice <- 0
for(i in 2:NROW(z)) {
splice[i] <- if(z\$test[i]==1) (rowSums(z[i,1:3]*z[i-1,4:6])/rowSums(z[i-1,4:6]))/z\$ind[i] else splice[i-1]
}
return(splice)
}
z\$splice<-spliceValue()
``````

And, as per the original example, to set the first value of `z\$splice` to NA,

``````z\$splice[1]<-NA
``````

As a note, this approach may take a while if `z` has many rows.

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