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I have matrix of signals generated in Matlab (24 x 121) and labels file (1x 24). After I loaded it, it is : labels

[array(['1-2'], 
      dtype='<U3') array(['1-3'], 
      dtype='<U3')
 array(['1-4'], 
      dtype='<U3') array(['2-2'], 
      dtype='<U3')
 array(['2-3'], 
      dtype='<U3') array(['2-4'], 
      dtype='<U3')
 array(['49-2'], 
      dtype='<U4') array(['49-3'], 
      dtype='<U4')
 array(['49-4'], 
      dtype='<U4') array(['50-2'], 
      dtype='<U4')
 array(['50-3'], 
      dtype='<U4') array(['50-4'], 
      dtype='<U4')
 array(['51-2'], 
      dtype='<U4') array(['51-3'], 
      dtype='<U4')
 array(['51-4'], 
      dtype='<U4') array(['52-2'], 
      dtype='<U4')
 array(['52-3'], 
      dtype='<U4') array(['52-4'], 
      dtype='<U4')
 array(['53-2'], 
      dtype='<U4') array(['53-3'], 
      dtype='<U4')
 array(['53-4'], 
      dtype='<U4') array(['54-2'], 
      dtype='<U4')
 array(['54-3'], 
      dtype='<U4') array(['54-4'], 
      dtype='<U4')]

and X

[[ 1.31973026  1.04553767  0.98759242 ...,  0.87344433  0.8734996
   0.88148139]
 [ 1.54466891  1.50167134  1.43233076 ...,  0.71953425  0.72355352
   0.76595696]
 [ 0.26974139  0.27669694  0.26486576 ...,  0.86765017  0.84838513
   0.83147331]
 ..., 
 [ 1.28762992  1.21298643  1.08822084 ...,  0.81903216  0.7559759
   0.62566092]
 [ 0.96190193  0.97199575  0.93630357 ...,  0.88570213  0.78969704
   0.69140163]
 [ 1.70054223  1.6876721   1.66986342 ...,  0.90825585  0.92562056
   0.93568893]]

I want to draw graph based on 1-correlation measure similarity, and not show branch if it is weight >0.7. The code I'm using is:

import scipy.io
import numpy as np
import matplotlib.pyplot as plt
from matplotlib import cm  # Large set of colormaps
import pandas as pd
from scipy.cluster import hierarchy
from sklearn import datasets
from sklearn import metrics
from sklearn import cluster
from scipy.spatial.distance import pdist
import networkx as nx
from matplotlib import pyplot as plt
import pylab
import networkx as nx
from matplotlib import pyplot as plt


o1 = scipy.io.loadmat('out.mat')
X=(o1['out'])
print(X)

o1 = scipy.io.loadmat('labels.mat')
labels=o1['labels']
labels = labels[0]
print(labels)
corr=1-np.corrcoef(X)
print(corr)
m, n = np.shape(corr)
G = nx.Graph()
corr[np.where(corr>0.7)]=0
for i in range(m):
    for j in range(n):
            s=labels[i]
            b=labels[j]
            w=corr[i,j]
            G.add_edge(s,b,weight=w)
nx.draw(G)
plt.show()

I get an error

Traceback (most recent call last): File "C:/Users/Kristina/Desktop/NOBS/source/grafovi.py", line 36, in G.add_edge(s,b,weight=w) File "C:\Python34\lib\site-packages\networkx\classes\graph.py", line 706, in add_edge if u not in self.node: TypeError: unhashable type: 'numpy.ndarray'

I cannot figure out what the problem is.

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  • 1
    Maybe s and b are lists and G.add_edge wants something else (e.g a tuple). Lists are unhashable. All immutable objects are hashable (typle etc.). See: docs.python.org/3/glossary.html and search for hashable In case G.add_edge wants to construct a dictionary and use either s and b as key, it has to be hashable.
    – Moritz
    May 17, 2016 at 15:02

1 Answer 1

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Your objects s and b are elements of the labels variable, which is a list of arrays, each looking like this:

array(['51-3'],dtype='<U4')

When you call Graph.add_node, it expects something like this:

>>> G.add_edge(1, 2, weight=4.7 )

As both the error message and Moritz noted, either (probably both) of the variables passed to G has to be hashable, but numpy arrays are not hashable.

It's far from clear to me exactly what you're trying to do, but if you just want to use the contents of each array (such as '51-3') in your graph, just access the zeroth element of each of your arrays, since in your current implementation s and b always seem to be single-element arrays anyway. What I mean is changing to this:

for i in range(m):
    for j in range(n):
            s=labels[i][0]  # change here
            b=labels[j][0]  # change here
            w=corr[i,j]
            G.add_edge(s,b,weight=w)

although I'm pretty sure you should use G.add_edges_from instead of looping. And, as always, if you run into unexpected errors and unexpected types, use print() and type() to determine what your variables actually are, instead of what you expect them to be.

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