# Using R to apply an equation to specific groups of data within a data set

I have a data set, and I would like to apply an equation to groups of my values. Specifically I would like to apply

``````sqrt(X^2+Y^2+Z^2)
``````

to all values within a specific time and variable

Looking at the data below I would like to group my values by unique time (TS) and Bins (Bin), and grab the square root of the sum of squares for each of the X Y and Z components.

``````    id  D      Bin  value   Month Day Year Hour Minute Second                  TS
1   X       V1   -0.320     1  30 2012   13     59     50 2012-01-30 13:59:50
1   Y       V1   -0.088     1  30 2012   13     59     50 2012-01-30 13:59:50
1   Z       V1    0.171     1  30 2012   13     59     50 2012-01-30 13:59:50
1   X       V2    0.368     1  30 2012   13     59     50 2012-01-30 13:59:50
1   Y       V2   -0.104     1  30 2012   13     59     50 2012-01-30 13:59:50
1   Z       V2    0.008     1  30 2012   13     59     50 2012-01-30 13:59:50
2   X       V1   -0.052     1  30 2012   14      0     50 2012-01-30 14:00:50
2   Y       V1    0.278     1  30 2012   14      0     50 2012-01-30 14:00:50
2   Z       V1   -0.086     1  30 2012   14      0     50 2012-01-30 14:00:50
2   X       V2   -0.214     1  30 2012   14      0     50 2012-01-30 14:00:50
2   Y       V2    0.118     1  30 2012   14      0     50 2012-01-30 14:00:50
2   Z       V2   -0.030     1  30 2012   14      0
``````

So up first would be V1 at 13:59:50

``````sqrt(-0.320^2 + -0.088^2 + 0.171^2)
``````

and then for V2 at t13:59:50

``````sqrt(0.368^2 +-0.104^2  + 0,008^2)
``````

and so on

I had tried to use this formula (Data is called "V")

`````` V=aggregate(value~TS+variable,data=V,sqrt((if(V\$D=="X")V\$value^2)+(if(V\$D=="Y")V\$value^2))+(if(V\$D=="Z")V\$value^2))
``````

But obviously that does not work. So does anyone have a better way to first index unique groups in a data set, and than apply an equation to said group?

-
In your numeric examples, you need parentheses around your negative numbers: `-0.320^2` is negative. –  Vincent Zoonekynd Feb 25 '12 at 0:22

Assuming you always have one X, one Y, and one Z for each combination of (TS, Bin), I would try this:

``````aggregate(value ~ TS + Bin, data = V, FUN = function(x)sqrt(sum(x^2)))
``````
-
``````library("plyr")
ddply(V, .(TS, Bin), summarise, norm=sqrt(sum(value*value)))
``````

If there is exactly one X, Y, and Z per TS/Bin combination.

-
Use the `plyr` and `reshape` (or `reshape2`) packages. (Really. If you're not using those packages, you'll be astounded how much better things go.) Briefly, you'll want to first `cast()` your data into a wide form, so that instead of columns named `D` and `value`, you have columns named `X`, `Y` and `Z`. From there, you can use any number of techniques. `transform` in base would work, although I like `mutate` in the `plyr` package a bit better:
``````V <- mutate(V, norm=sqrt(X^2+Y^2+Z^2))
Just make sure the `cast` statement takes note of the values of `TS` and `Bin` so you get those rows laid out correctly :-) . –  Carl Witthoft Feb 25 '12 at 0:54