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# How to classify a set of samples via a continuous feature?

For example I got below table which is simply a coarse distribution for 20 persons over their age

age        count of person

•     2                  1
•     5                  5
•     8                  2
•     10                3
•     15                1
•     16                2
•     17                1
•     20                4
•     21                1

Then by using the same dataset, I could build another 'better' table .

age         count of person

•    10-                  8
•    10s                  7
•    20+                 5

In fact , I could make more tables which contains different age range combination by using the same dataset.

Now I wonder how could I find the best combinations. The possible "goodness functions" we could use to measure if the combination is good or not might come by following three principles:

• There should not be too many or too little classes
• Ranges of classes should not vary too much.
• Distribution should be smooth enough, that is ,number of items covered by each class should not vary too much.

Since this question represents a situation which is just general enough to describe a kind of specific problems , some sophisticated solutions to it should have already been there . But I failed to find them. Anyone could give some suggestions please?

I have go through some classification algorithm like PCA, k-mean or "max entropy based algorithm" but seems they are just too general to cover this specific problem by following all of the above three principles.

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How does this statistics question relate to programming? I'm not sure it would be 100% appropriate, but have you considered math.stackexchange.com? – stakx Aug 7 '11 at 9:40
What is the purpose of this clustering? Usually, you cluster into predefined groups and the cases where the numbers for some class are very different from the others are interesting. – svick Aug 7 '11 at 10:26
The rule of thumb is to take ~ sqrt(N) bins if you have N data. – Alexandre C. Aug 7 '11 at 10:54
I believe you should formulate requirements more precisely - "too little", "too much", "smooth enough", etc. aren't good conditions for am algorithm. Can you provide us with a background, what this task is part of? – ffriend Oct 29 '11 at 0:37
@stakx: in general, such a question may have a purely algorithmic solution (some data structure or some well-known algorithm), so actually it relate to programming. However, it also relates to math and statistics, so if nobody provides good answer I also suggest to try on the CrossValidated. But first let's look at problem background and possible algorithmic solutions. – ffriend Oct 29 '11 at 0:42

``````double goodness(double firstThreshold, double bucketWidth, int numBuckets)