# NetworkX python : pagerank_numpy, pagerank fails but pagerank_scipy works

I am running PageRank on a weighted DiGraph where nodes = 61634, edges = 28,378.

• `pagerank(G)` throws me ZeroDivsionError

• `pagerank_numpy(G)` throws me ValueError : array to big

• `pagerank_scipy(G)` gives me the page ranks though

I can understand that `pagerank_numpy` error would be due to memory limitations but why does pagerank fail? I tried adding an infinitesimal values to edges with zero weights but the same issues persist. Some pointers would be nice.

Link to my GraphML file - https://mega.co.nz/#!xlYzEDAI!Lyh5pD-NJL61JPfkrNyJrEm0NnFc586A0MUD8OMYAO0

NetworkX version - 1.8.1 Python - 2.7

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`pagerank` fails because it performs its computation using `stochastic_graph` -- unlike `pagerank_numpy` or `pagerank_scipy`. From the docs, `stochastic_graph` requires:

A NetworkX graph, must have valid edge weights

This "valid edge weights" point (which is not explained at all, which I think is a mistake) is the source of your problem.

For a directed graph, `stochastic_graph` uses the `out_degree` of each node to normalize the edges. Again from the docs:

The [out] degree is the sum of the edge weights adjacent to the node.

So when you have edges with zero weight or negative weight, the normalization process breaks with a `ZeroDivisionError`. The reason that negative weights are an issue is that they can cancel out positive weights, and thus give a node degree zero. For example, in your graph, node `'2123271'` has two edges who's weights sum to `0`:

``````>>> G.edges('2123271', data=True)
[('2123271', '1712899', {'weight': -1L}),
('2123271', '890839', {'weight': 1L})]
``````

Replacing negative or zero edge weights in your graph with a small, positive edge weight made it so `pagerank` could run:

``````In [1]: import networkx as nx
In [3]: defaultEdgeWeight = 0.01
In [4]: for u, v, d in G.edges(data=True):
if d['weight'] <= 0:
G[u][v]['weight'] = defaultEdgeWeight
In [5]: P = nx.pagerank( G )
``````

Of course, `pagerank` didn't converge after 102 iterations, but that's another issue.

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Thank you for your response. Is using `pagerank_scipy` good enough or does it sound like Garbage-In, Garbage-Out? Specifically, Can I keep my graph with the negative weights and use `pagerank_scipy` to get meaningful results? –  Dexter Nov 12 '13 at 17:41
`pagerank_scipy` should be fine if you run it long enough. However, I'm not sure what you hope to learn using negative weights. Pagerank is fundamentally a random walk with restart on a graph, where weights on the edges are used to weigh the probability of visiting certain neighbors. Since probabilities are [0, 1], I'm not sure how you would interpret a negative weight. It should run, though. –  mdml Nov 12 '13 at 20:27
Would it make more sense if I add a small default weight like you said when the weights are negative? I am more worried about the interpretation of the results. PageRank is essentially just a means to the end. –  Dexter Nov 13 '13 at 4:59
Yes, I think you should transform your negative weight edges to make them positive (even something as simple as taking the absolute value), or just remove them. The best way to do this depends a lot on your data, however. –  mdml Nov 13 '13 at 14:44