def process_planted(min_size, max_size, max_count, n_samples):
    """Fixture for loading samples from the Planted dataset"""
    samples = p_planted[:n_samples]
    d = subgraph.search(samples, g_planted, min_size, max_size, max_count)
    return d
# .. raw:: html
#     :file: ../../examples_apps/planted.html
#
# .. note::
#     The command ``plotly.offline.plot()`` is used to display plots in the documentation. In
#     practice, you can simply use ``plot_graph.show()`` to view the graph.

##############################################################################
# A more interesting challenge is to find dense subgraphs of different sizes; it is often
# useful to identify many high-density subgraphs, not just the densest ones. This is the purpose of
# the :func:`~.subgraph.search` function in the :mod:`~.apps.subgraph` module: to identify
# collections of dense subgraphs for a range of sizes. The output of this function is a
# dictionary whose keys correspond to subgraph sizes within the specified range. The values in
# the dictionary are the top subgraphs of that size and their corresponding density.

dense = subgraph.search(samples, pl_graph, 8, 16,
                        max_count=3)  # we look at top 3 densest subgraphs
for k in range(8, 17):
    print(dense[k][0])  # print only the densest subgraph of each size

##############################################################################
# From the results of the search we learn that, depending on their size, the densest subgraphs
# belong to different regions of the graph: dense subgraphs of less than ten nodes are contained
# within the planted subgraph, whereas larger dense subgraphs appear outside of the planted
# subgraph. Smaller dense subgraphs can be cliques, characterized by having
# maximum density of 1, while larger subgraphs are less dense. Let's see what the smallest and
# largest subgraphs look like:

densest_8 = plot.graph(pl_graph, dense[8][0][1])
densest_16 = plot.graph(pl_graph, dense[12][0][1])

plotly.offline.plot(densest_8, filename="densest_8.html")
Exemple #3
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 def graphDensity(self, samples, min_pho, max_pho, subgraph_size, max_count):
     dense = subgraph.search(samples, pl_graph, subgraph_size, min_pho, max_count=max_count)
     dense_freq = []
     for k in range(subgraph_size, min_pho+1):
         dense_freq.append([k,len(dense[k])])
     return dense, dense_freq