I have a pandas dataframe of the the following form, df,

    A    B    C    D
A   0   0.5   0.5  0 
B   1    0    0    0
C   0.8  0    0   0.2
D   0    0    1    0

I am trying to create a networkx graph from this. I have tried the following variations of code:




G=networkx.from_pandas_adjacency(df, create_using=networkx.DiGraph())

However, what ends up happening is that the graph object either:

(For option A) basically just takes one of the values among the two parallel edges between any two given nodes, and deletes the other one.

(For option B) takes one of the values among the two parallel edges between any two given nodes, as the value for both edges.

For example,

print( list ( filter ( lambda x: x[0]=='A' and x[1] == 'B', list(G.edges.data()) ) ) )


print( list ( filter ( lambda x: x[0]=='B' and x[1] == 'A', list(G.edges.data()) ) ) )

prints 1 and [] for option A. prints two 1s for option B.

How do i resolve this issue?

  • What line of code does this occur in? Also, what version of networkx are you using? I suspect that's happening because you are using a version prior to 2.0 – Melsauce Jan 12 at 23:14
  • OK, what line of code? – Melsauce Jan 12 at 23:17
  • I have made an edit (although it doesn't have anything to do with your error), kindly have a look. That error isn't popping up for me; it's working fine at my end. – Melsauce Jan 12 at 23:41
  • I fixed it, but you'd better give us code (minimal example) we can copy-paste into our editor. This just speeds up the whole process – Elmex80s Jan 13 at 1:13
  • 1
    Seems to work pn pyhton 3.6 with networkx 2.1 - In [132]: list(G.edges.data()) [('C', 'D', {'weight': 0.2}), ('C', 'A', {'weight': 0.8}), ('D', 'C', {'weight': 1.0}), ('A', 'C', {'weight': 0.5}), ('A', 'B', {'weight': 0.5}), ('B', 'A', {'weight': 1.0})] – Charles Pehlivanian Jan 16 at 4:18
up vote 2 down vote accepted

Try using numpy as a workaround.

G = nx.from_numpy_matrix(df.values, parallel_edges=True, 

# Because we use numpy, labels need to be reset
label_mapping = {0: "A", 1: "B", 2: "C", 3: "D"}
G = nx.relabel_nodes(G, label_mapping)


OutMultiEdgeDataView([('A', 'B', {'weight': 0.5}), 
                      ('A', 'C', {'weight': 0.5}), 
                      ('B', 'A', {'weight': 1.0}), 
                      ('C', 'A', {'weight': 0.8}), 
                      ('C', 'D', {'weight': 0.2}), 
                      ('D', 'C', {'weight': 1.0})])

In a more general case, to get label_mapping you can use

label_mapping = {idx: val for idx, val in enumerate(df.columns)}

This seems to be a bug in networkx 2.0. They will fix it in 2.1. See this issue for more information.

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