# What algorithm would you use for clustering based on people attributes?

I'm pretty new in the field of machine learning (even if I find it extremely interesting), and I wanted to start a small project where I'd be able to apply some stuff.

Let's say I have a dataset of persons, where each person has N different attributes (only discrete values, each attribute can be pretty much anything).

I want to find clusters of people who exhibit the same behavior, i.e. who have a similar pattern in their attributes ("look-alikes").

I was thinking about using PCA since we can have an arbitrary number of dimensions, that could be useful to reduce it. K-Means? I'm not sure in this case. Any ideas on what would be most adapted to this situation?

I do know how to code all those algorithms, but I'm truly missing some real world experience to know what to apply in which case.

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K-means using the n-dimensional attribute vectors is a reasonable way to get started. You may want to play with your distance metric to see how it affects the results.

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How do you define the mean in this case, since my attributes can have totally arbitrary discret values? –  Charles Menguy Apr 14 '12 at 3:03
The way people often model discrete values is by splitting them up into binary coded variables. For example, if you have a "Pet" field with possible values "cat" and "dog", you would recode that as 2 binary variables, "cat" and "dog". –  Jason Sundram Apr 14 '12 at 3:05
I see thanks for the tip :) Since I will have a large number of dimensions, wouldn't it be useful to use PCA first to reduce the number of dimensions? –  Charles Menguy Apr 14 '12 at 3:10
Yeah, PCA could help if you are trying to reduce the dimensionality of your space. How many dimensions do you have? –  Jason Sundram Apr 14 '12 at 3:20
Actually k-means isn't very sensible unless you are in Euclidean space. Of course you can hack around this with the cat/dog attributes, but that heavily biases your results, as there are not values inbetween of 0 and 1 in this attribute. K-means will then prefer strongly the splits "cats only" and "dogs only". –  Anony-Mousse Apr 14 '12 at 6:13

The first step to pretty much any clustering algorithm is to find a suitable distance function. Many algorithms such as `DBSCAN` can be parameterized with this distance function then (at least in a decent implementation. Some of course only support Euclidean distance ...).