I have a set of results (numbers), and I would like to know if a given result is very good/bad compared to the **previous** results (only previous).

Each result is a number € IR+. For example if you have the sequence `10, 11, 10, 9.5, 16`

then 16 is clearly a very good result compared to the previous ones. I would like to find an algorithm to detect this situation (very good/bad result compared to previous results).

A more general way to state this problem is : how to determine if a point - in a given set of data - is scattered from the rest of the data.

Now, that might look like a peak detection problem, but since the previous values are not constant there are many tiny peaks, and I only want the big ones.

My first idea was to compute the mean and determine the standard deviation but it is quite limited. Indeed, if there is **one** huge/low value in the previous results it will change dramatically the mean/stadard deviation and the next results will have to be even greater/lower to beat the standard deviation (in order to be detected) and therefor many points will not be (properly) detected.

I'm quite sure that must a well known problem.

Can anyone help me on this ?

at least oncein the data history. in this case dismiss all schemes that try to average out previous results, eg. using some sort of moving average. – collapsar Aug 16 '13 at 13:56littlerandomness in itself – user1493046 Aug 16 '13 at 14:11