# Aging a dataset

For reasons I'd rather not go into, I need to filter a set of values to reduce jitter. To that end, I need to be able to average a list of numbers, with the most recent having the greatest effect, and the least recent having the smallest effect. I'm using a sample size of 10, but that could easily change at some point.

Are there any reasonably simple aging algorithms that I can apply here?

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So, automated stock trading then ;) Look at the wikipedia article on half life (the formula, not the game) and apply that to the values. That way, you'll get a time weighted average that should do what you need. –  Andrew Rollings Mar 6 '09 at 15:24
Voltages, actually, but a good guess. –  Lee Crabtree Mar 6 '09 at 15:34

• Have a look at the exponential smoothing. Fairly simple, and might be sufficient for your needs. Basically recent observations are given relatively more weight than the older ones.
• Also (depending on the application) you may want to look at various reinforcement learning techniques, for example Q-Learning or TD-Learning or generally speaking any method involving the discount.
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I ran into something similar in an embedded control application.

The simplest option that I came across was a 3/4 filter. This gets applied continuously over the entire data set:

``````current_value = (3*current_value + new_value)/4
``````

I eventually decided to go with a 16-tap FIR filter instead:

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Many weighted averaging algorithms could be used.

For example, for items I(n) for n = 1 to N in sequence (newest to oldest):

``````(SUM(I(n) * (N + 1 - n)) / SUM(n)
``````
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