# Calculating weighted mean and standard deviation

I have a time series `x_0 ... x_t`. I would like to compute the exponentially weighted variance of the data. That is:

``````V = SUM{w_i*(x_i - x_bar)^2, i=1 to T} where SUM{w_i} = 1 and x_bar=SUM{w_i*x_i}
``````

The goal is to basically weight observations that are further back in time less. This is very simple to implement but I would like to use as much built in funcitonality as possible. Does anyone know what this corresponds to in R?

Thanks

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I'm guessing that this is an incomplete specification and that what you really want delivered will require better specification of how w_i is constructed and more detail on the limits of summation. –  IShouldBuyABoat Apr 7 '12 at 14:19

R provides weighted mean. In fact, ?weighted.mean shows this example:

`````` ## GPA from Siegel 1994
wt <- c(5,  5,  4,  1)/15
x <- c(3.7,3.3,3.5,2.8)
xm <- weighted.mean(x, wt)
``````

One more step:

``````v <- sum(wt * (x - xm)^2)
``````
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yes, i'm looking for weighted variance though. not mean –  Alex Apr 8 '12 at 2:26
Hmisc, as it turned out, does just this. –  Alex Apr 8 '12 at 2:26
Note the last line in the answer. That is the weighted variance. –  Matthew Lundberg Apr 8 '12 at 2:47
ahh, sorry didn't see that! thanks for the answer. –  Alex Apr 8 '12 at 18:46
Just a hint... If you are thick skulled like me, 15 is the sum of the individual weights. Weights are then normalized in this case. I didn't catch that at first. –  tharen Jun 13 '12 at 18:51