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I'm a little confused about online kmeans clustering. I know that it allows me to cluster with just one data at a time. But,is this all limited to one session? Suppose that I have a bunch of data clustered via this method and I get the clustered data result, would I be able to add more data to the cluster in the future?

I've also been looking for implementations of this code, and to no avail. Anyone know of any?

Update: To clarify more. Here is how my code works right now:

  1. Image is taken from live video feed, once enough pictures are saved, get kmeans of sift features.
  2. Repeat step 1, a new batch of live feed pictures, get kmeans again. Combine the kmeans vectors with the previous kmeans like :[A B]

You can see that this is bad, because I quickly get too much clusters, and each batch of clusters will definitely have overlaps with another batch.

What I want:

  1. Image taken from live video feed, once pics are saved, get kmeans
  2. Repeat step 1, get kmeans again, which updates and adds new clusters to the previous cluster.

Nothing that I've seen could accommodate that, unless I'm just not understanding them correctly.

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Any specific platform? –  mschonaker Aug 13 '12 at 18:44
@mschonaker preferably matlab, but i could live with C++ –  mugetsu Aug 13 '12 at 20:19

1 Answer 1

If you look at the original (!) publications, the method proposed by MacQueen - where the name k-means comes from - was in fact an online algorithm. I'm not sure if MacQueen did multiple passes over the data to improve the result. I believe he used a single pass, and objects would never be reassigned to a different cluster. If so, it was already an online algorithm!

Means are commonly computed as sum / count. This is not very sensible from a numerical point of view. E.g. in the classic Knuth book you can find a method for incrementally updating means. Wikipedia has it also.

Things get slightly more complicated once you actually want to reassign earlier points. But usually in a streaming context you do not know the previous points, so you cannot do that anyway.

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so are there any conventional solution to this? This is the only thing I've found so far:icml.cc/2012/papers/291.pdf –  mugetsu Aug 15 '12 at 18:55
What do you mean with "conventional solution"? Is MacQueen 1967 not conventional enough? –  Anony-Mousse Aug 15 '12 at 22:28
I don't think I was very clear with what I wanted. Maybe I'm approaching this problem completely wrong. Please take a look at my updated post –  mugetsu Aug 17 '12 at 4:42
Try updating the existing means with the new instances only. It's fairly simple. Or have a look at MacQueen, which actually processes "one instance at a time". This can obviously be done on a stream, too. –  Anony-Mousse Aug 17 '12 at 16:59

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