alternative similarity measure in DBSCAN?

I test my image set on DBSCAN algorithm in `scikit-learn` python module . There are alternatives for similarity computing:

``````# Compute similarities
D = distance.squareform(distance.pdist(X))
S = 1 - (D / np.max(D))
``````

A weighted measure or something like that i could try, examples?

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There exists a generalization of DBSCAN, known as "Generalized DBSCAN".

Actually for DBSCAN you do not even need a distance. Which is why it actually does not make sense to compute a similarity matrix in the first place.

All you need is a predicate "getNeighbors", that computes objects you consider as neighbors.

See: in DBSCAN, the distance is not really used, except to test whether an object is a neighbor or not. So all you need is this boolean decision.

You can try the following approach: initialize the matrix with all 1s. For any two objecs that you consider similar for your application (we can't help you a lot on that, without knowing your application and data), fill the corresponding cells with 0. Then run DBSCAN with epsilon = 0.5, and obviously DBSCAN will consider all the 0s as neighbors.

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You can use whatever similarity matrix you like. It just need to based on a valid distance (symmetric, positive semi-definite).

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I don't know other similarity matrices, any example? or list where can i choose? –  postgres Feb 13 at 14:55
Cosine similarity between sparse positive vectors (e.g. word frequencies), heat kernel or RBF kernel, similarities based on the l1 (Manhattan) norm instead of the euclidean norm... –  ogrisel Feb 13 at 22:20
Actually no, it doesn't require to be a valid distance/metric. DBSCAN requires just a binary "isNeighbor" information. There is no symmetry requirement, technically. You could use a random matrix and DBSCAN would still work. (The results with proper distances are usually better though). @postgres you need to figure out what is "similar" for your particular task! –  Anony-Mousse Feb 14 at 7:13
Actually, the `DBSCAN` estimator wants distances, not similarities. –  larsmans Feb 14 at 11:33