# In scikit, can dbscan use sparse matrix?

I got Memory Error when I was running dbscan algorithm of scikit. My data is about 20000*10000, it's a binary matrix.

(Maybe it's not suitable to use DBSCAN with such a matrix. I'm a beginner of machine learning. I just want to find a cluster method which don't need an initial cluster number)

Anyway I found sparse matrix and feature extraction of scikit.

But I still have no idea how to use it. In DBSCAN's specification, there is no indication about using sparse matrix. Is it not allowed?

If anyone knows how to use sparse matrix in DBSCAN, please tell me. Or you can tell me a more suitable cluster method.

Thank you!

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You can pass a distance matrix to `DBSCAN`, so assuming `X` is your sample matrix, the following should work:

``````from sklearn.metrics.pairwise import euclidean_distances

D = euclidean_distances(X, X)
db = DBSCAN(metric="precomputed").fit(D)
``````

However, the matrix `D` will be even larger than `X`: `n_samples`² entries. With sparse matrices, k-means is probably the best option.

(DBSCAN may seem attractive because it doesn't need a pre-determined number of clusters, but it trades that for two parameters that you have to tune. It's mostly applicable in settings where the samples are points in space and you know how close you want those points to be to be in the same cluster, or when you have a black box distance metric that scikit-learn doesn't support.)

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DBSCAN doesn't require the distance matrix, that is a limitation of the current sklearn implementation, not of the algorithm. Plus, in many cases, both the epsion and the minpts parameter of DBSCAN can be chosen much easier than `k`. When using geographic data for example, a user may well be able to say that a radius of "1 km" is a good epsilon, and that there should be at least 10 events within this radius. –  Anony-Mousse May 25 at 12:38
@Anony-Mousse: I'm aware that the problems are in the implementation, not the algorithm. As for picking eps and minpts, yes, for some problems that may be easy, but for others, extensive tuning may be required. Not all problems live in Euclidean space or even on the surface of the earth. –  larsmans May 25 at 12:49

Sklearn's DBSCAN algorithm doesn't take sparse arrays. However, KMeans and Spectral clustering do, you can try these. More on sklearns clustering methods: http://scikit-learn.org/stable/modules/clustering.html

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Which actually is sklearns fault, not DBSCAN... –  Anony-Mousse May 25 at 12:37
The `scikit` implementation of DBSCAN is, unfortunately, very naive. It needs to be rewritten to take indexing (ball trees etc.) into account.