# DBSCAN in Python: Unexpected result

I'm trying to understand the DBSCAN implementation by scikit-learn, but I'm having trouble. Here is my data sample:

``````X = [[0,0],[0,1],[1,1],[1,2],[2,2],[5,0],[5,1],[5,2],[8,0],[10,0]]
``````

Then I calculate D as in the example provided

``````D = distance.squareform(distance.pdist(X))
``````

`D` returns a matrix with the distance between each point and all others. The diagonal is thus always 0.

Then I run DBSCAN as:

`````` db = DBSCAN(eps=1.1, min_samples=2).fit(D)
``````

`eps = 1.1` means, if I understood the documentation well, that points with a distance of smaller or equal 1.1 will be considered in a cluster (core).

`D[1]` returns the following:

``````>>> D[1]
array([  1.        ,   0.        ,   1.        ,   1.41421356,
2.23606798,   5.09901951,   5.        ,   5.09901951,
8.06225775,  10.04987562])
``````

which means the second point has a distance of 1 to the first and the third. So I expect them to build a cluster, but ...

``````>>> db.core_sample_indices_
[]
``````

which means no cores found, right? Here are the other 2 outputs.

``````>>> db.components_
array([], shape=(0, 10), dtype=float64)
>>> db.labels_
array([-1., -1., -1., -1., -1., -1., -1., -1., -1., -1.])
``````

Why is there any cluster?

thanks

-

I figure the implementation might just assume your distance matrix is the data itself.

See: usually you wouldn't compute the full distance matrix for DBSCAN, but use a data index for faster neighbor search.

Judging from a 1 minute Google, consider adding `metric="precomputed"`, since:

fit(X)

X: Array of distances between samples, or a feature array. The array is treated as a feature array unless the metric is given as ‘precomputed’.

-
Unfortunately, the DBSCAN implementation in scikit-learn does not use any index structure and thus takes quadratic time. But you're right about `metric="precomputed"`, so +1. –  larsmans Apr 10 '13 at 13:44
Thank you. I tried to search for the error, but it is not easy to search if you don't know where exactly the problem is. As I wrote, I didn't understood the documentation very well. Thanks! –  otmezger Apr 10 '13 at 18:48