# Perform a vectorized exponential moving average in octave

In GNU Octave, would like to calculate an n-day exponential moving average of a vector without using a for-loop.

I am able to do this with a for loop but it is inefficient. I would like to use the filter function, however I am unsure how to get this to work correctly.

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After piecing together the bits from this thread

http://octave.1599824.n4.nabble.com/vectorized-moving-average-td2132090.html

I built this function using Octave's filter function. It starts with the simple moving average as the basis.

``````function meanV = movingEMean(V, window)
simpleAvg = mean(V(1:window));
alpha = 1/window;
X = V(window:end);
X(1) = simpleAvg;
meanV = filter(alpha, [1 alpha-1], X, simpleAvg*(1-alpha));
end
``````

`V` is the column vector of numbers to calculate the exponential moving average. `window` is an integer as a number of days, I used 12.

Here is a mathematical explanation of this function.

http://en.wikipedia.org/wiki/Moving_average#Exponential_moving_average

Note that the page uses `2/(n+1)` (where `n` is `window` or the number of days) as `alpha`, but I use `1/n` because that value of `alpha` fit my needs. Adjust `alpha` as needed.

Alternatively, I sometimes need my input and output vector's dimensions to match. I fill invalid values with `NaN` by adding `meanV = [NaN(window-1,1); meanV];` as the last line in the `movingEMean` function. You could also fill it with `simpleAvg` if you want a rough estimate.

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