# Can not the computed centroid values to be plotted over the existing plot based on data

EDIT: Ok, if the data are two dimensional as follows:

``````x = [1,1,1,2,2,2,3,3,3,4,4,4,5,5,5]
y = [8,7,5,4,3,7,8,3,2,1,9,11,16,18,19]
``````

Then, how to calculate the k means (3 values) and make plot?

Can not the computed centroid values be plotted over the existing plot based on data here? I want to make the similiar plot as done in the following link

http://glowingpython.blogspot.jp/2012/04/k-means-clustering-with-scipy.html

However, I could not understand. Any help would be highly appreciated.

``````import numpy as np, matplotlib.pyplot as plt
from scipy.cluster.vq import kmeans, vq

data = np.array(np.random.rand(100))

plt.plot(data, 'ob')

centroids, variances= kmeans(data,3,10)
indices, distances= vq(data,centroids)

print (centroids)
[ 0.82847854  0.49085422  0.18256191]

plt.show()
``````
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You have one-dimensional data. This is why the centroids have only one coordinate. –  David Zwicker Nov 24 '13 at 17:30
@David is correct. Try `data = np.random.rand(100,2)` then `plot(*data.T, 'ob')` (btw, `np.random.rand` returns an array, no need to call `np.array` on it.) –  askewchan Nov 24 '13 at 18:50
My answer includes your edit, just add this line: `data = np.column_stack([x,y])` –  askewchan Dec 12 '13 at 20:43
@ askewchan ok i got it, thanks –  2964502 Dec 18 '13 at 15:01

You can use the original answer below, just take:

``````data = np.column_stack([x,y])
``````

If you want to plot the centroids, it is the same as below in the original answer. If you want to color each value by the group selected, you can use `kmeans2`

``````from scipy.cluster.vq import kmeans2

centroids, ks = kmeans2(data, 3, 10)
``````

To plot, pick `k` colors, then use the `ks` array returned by `kmeans2` to select that color from the three colors:

``````colors = ['r', 'g', 'b']
plt.scatter(*data.T, c=np.choose(ks, colors))
plt.scatter(*centroids.T, c=colors, marker='v')
``````

As @David points out, your `data` is one dimensional, so the centroid for each cluster will also just be one dimensional. The reason your plot looks 2d is because when you run

``````plt.plot(data)
``````

if `data` is 1d, then what the function actually does is plot:

``````plt.plot(range(len(data)), data)
``````

To make this clear, see this example:

``````data = np.array([3,2,3,4,3])
centroids, variances= kmeans(data, 3, 10)
plt.plot(data)
``````

Then the centroids will be one dimensional, so they have no `x` location in that plot, so you could plot them as lines, for example:

``````for c in centroids:
plt.axhline(c)
``````

If you want to find the centroids of the x-y pairs where `x = range(len(data))` and `y = data`, then you must pass those pairs to the clustering algorithm, like so:

``````xydata = np.column_stack([range(len(data)), data])
centroids, variances= kmeans(xydata, 3, 10)
``````

But I doubt this is what you want. Probably, you want random `x` and `y` values, so try something like:

``````data = np.random.rand(100,2)
centroids, variances = kmeans(data, 3, 10)
``````
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