Is there a way to perform sequential k-means clustering using scikit-learn? I can't seem to find a proper way to add new data, without re-fitting all the data.
If you do want the centroids to be changed by the addition of new data, i.e. you want to do clustering in an online setting, use the
You can pass in initial values for the centroids with the
assuming you're just adding data points and not changing
I think this will sometimes mean you get a suboptimal result, but it should usually be faster. You might want to occasionally redo the fit with, say, 10 random seeds and take the best one.