# Detect points that are very scattered from the rest of the data

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 ?

-
clustering probably suits your needs best if you rate the new value as ordinary if a result of similar magnitude occurred at least once in 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 13:56
In fact, the values in the data set can be increasing/decreasing. Therefore, the idea of looking if a result of similar magnitude occured at least once, probably would unfortunatly not work when there is a "trend" in the data (increasing/decreasing). –  user1493046 Aug 16 '13 at 14:02
will the trend be linear ? –  collapsar Aug 16 '13 at 14:06
It could be anything (not necessarly linear) .. The data has a little randomness in itself –  user1493046 Aug 16 '13 at 14:11

This kind of problem is called Anomaly Detection.

-
You're right, thank you :p Other people having the same problem I did might want to look up `outlier detection` –  user1493046 Aug 16 '13 at 19:15