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I have an array of coordinate data (in Web Mercator Eastings and Northings, thus in metres) that looks like this:

array([[ -232372.201264,  6785082.61011 ],
   [ -233396.451899,  6784865.49884 ],
   [ -234045.110572,  6784642.2575  ],
   ..., 
   [ -234473.356653,  6778646.81953 ],
   [ -234918.300657,  6778772.69366 ],
   [ -230900.668915,  6778369.2902  ]])

This array is stored as the variable 'coords'.

I am attempting to compute - and then plot - the clusters within this dataset using Scikit Learn and DBSCAN (thanks to this post for getting me this far).

The code I am using is taken from this tutorial, however I get an attribute error. Code and error shown below:

db = DBSCAN(eps=0.2, min_samples=1, metric="precomputed")
cluster_labels = db.labels_
num_clusters = len(set(cluster_labels))
clusters = pd.Series([coords[cluster_labels == n] for n in range(num_clusters)])
print('Number of clusters: {}'.format(num_clusters))

...

AttributeError: 'DBSCAN' object has no attribute 'labels_'

Can anyone explain where I'm going wrong?

  • what version of sklearn are you using? – Grr Apr 25 '17 at 12:15
  • @Grr I'm using v0.18.1 – the_bonze Apr 25 '17 at 12:19
  • Web Mercator is not in meters but in pixels at the given zoom level? Also, it does not work at the 180 degree line... and you get substantial error because of the distortion. – Anony-Mousse Apr 25 '17 at 18:51
  • Pick two cities east-west of each other, e.g., New York and San Francisco, and check their distance! – Anony-Mousse Apr 25 '17 at 19:05
  • @Anony-Mousse the Eastings and Northings, which I was referring to, are values in metres: epsg.io/3857 – the_bonze Apr 27 '17 at 6:57
4

you are missing fit:

db = DBSCAN(eps=0.2, min_samples=1, metric="precomputed")
db.fit(data)
cluster_labels = db.labels_
num_clusters = len(set(cluster_labels))
clusters = pd.Series([coords[cluster_labels == n] for n in range(num_clusters)])
print('Number of clusters: {}'.format(num_clusters))
  • Thanks! However, I'm now getting a new error: ValueError: Precomputed metric requires shape (n_queries, n_indexed). Got (10487, 2) for 10487 indexed. – the_bonze Apr 25 '17 at 12:39
  • 1
    remove metric="precomputed" – Abhishek Thakur Apr 25 '17 at 12:52
  • Seems to work - thank you! How does removing "precomputed" affect the outcome? Apologies for the n00b questions; this is all new to me. Thank you for your help :) – the_bonze Apr 25 '17 at 12:53
  • From docs: If metric is “precomputed”, X is assumed to be a distance matrix and must be square. X may be a sparse matrix, in which case only “nonzero” elements may be considered neighbors for DBSCAN. – Abhishek Thakur Apr 25 '17 at 12:59
2

You have to call it like

db=DBSCAN(eps=0.2, min_samples=1, metric="precomputed").fit(mymatrix) 

(please notice the fit() function)

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