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I have a dataset of 38 apartments and their electricity consumption in the morning, afternoon and evening. I am trying to clusterize this dataset using the k-Means implementation from scikit-learn, and am getting some interesting results.

First clustering results: Img

This is all very well, and with 4 clusters I obviously get 4 labels associated to each apartment - 0, 1, 2 and 3. Using the random_state parameter of KMeans method, I can fix the seed in which the centroids are randomly initialized, so consistently I get the same labels attributed to the same apartments.

However, as this specific case is in regards of energy consumption, a measurable classification between the highest and the lowest consumers can be performed. I would like, thus, to assign the label 0 to the apartments with lowest consumption level, label 1 to apartments that consume a bit more and so on.

As of now, my labels are [2 1 3 0], or ["black", "green", "blue", "red"]; I would like them to be [0 1 2 3] or ["red", "green", "black", "blue"]. How should I proceed to do so, while still keeping the centroid initialization random (with fixed seed)?

Thank you very much for the help!

  • 2
    I think your best bet is to annotate the labels after. – GWW Jul 3 '17 at 15:13
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Transforming the labels through a lookup table is a straightforward way to achieve what you want.

To begin with I generate some mock data:

import numpy as np

np.random.seed(1000)

n = 38
X_morning = np.random.uniform(low=.02, high=.18, size=38)
X_afternoon = np.random.uniform(low=.05, high=.20, size=38)
X_night = np.random.uniform(low=.025, high=.175, size=38)
X = np.vstack([X_morning, X_afternoon, X_night]).T

Then I perform clustering on data:

from sklearn.cluster import KMeans
k = 4
kmeans = KMeans(n_clusters=k, random_state=0).fit(X)

And finally I use NumPy's argsort to create a lookup table like this:

idx = np.argsort(kmeans.cluster_centers_.sum(axis=1))
lut = np.zeros_like(idx)
lut[idx] = np.arange(k)

Sample run:

In [70]: kmeans.cluster_centers_.sum(axis=1)
Out[70]: array([ 0.3214523 ,  0.40877735,  0.26911353,  0.25234873])

In [71]: idx
Out[71]: array([3, 2, 0, 1], dtype=int64)

In [72]: lut
Out[72]: array([2, 3, 1, 0], dtype=int64)

In [73]: kmeans.labels_
Out[73]: array([1, 3, 1, ..., 0, 1, 0])

In [74]: lut[kmeans.labels_]
Out[74]: array([3, 0, 3, ..., 2, 3, 2], dtype=int64)

idx shows the cluster center labels ordered from lowest to highest consumption level. The appartments for which lut[kmeans.labels_] is 0 / 3 belong to the cluster with the lowest / highest consumption levels.

  • 1
    I was looking for something built in in the scikit learn package, wondering if it was already implemented in the clustering methods. Not having that, your solution worked perfectly - thank you. – Sergio Jul 5 '17 at 7:37
  • 1
    You saved my day... Thanks @Tonechas – Metal3d Feb 5 at 18:18

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