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pycombo 0.1.7
pyCOMBO
pyCombo is a python wrapper around C++ implementation of the [network] community detection algorithm called "Combo".
Details of the algorithm are described in the paper "General optimization technique for high-quality community detection":
Sobolevsky, S., Campari, R., Belyi, A. and Ratti, C., 2014. General optimization technique for high-quality community detection in complex networks. Physical Review E, 90(1), p.012811.
Installation
You can install the latest release of pycombo directly from PyPI by executing this:
python -m pip install pycombo
Quick Start
The basic usage is as follows:
import pycombo
import networkx as nx
partition = pycombo.execute(nx.karate_club_graph())
Package supports NetworkX graphs and .net files. Algorythm uses modularity score as a loss function,
but you can use your own metrics as node weights with treat_as_modularity=True parameter
Parameters
graph : nx.Graph object, or string treated as path to Pajek .net file.
weight : Optional[str], defaults to weight. Graph edges property to use as weights. If None, graph assumed to be unweighted.
Ignored if graph is passed as string (path to the file), or such property does not exist.
max_communities : Optional[int], defaults to None. Maximum number of communities. If <= 0 or None, assume to be infinite.
modularity_resolution : float, defaults to 1.0. Modularity resolution parameter.
num_split_attempts : int, defaults to 0. Number of split attempts. If 0, autoadjust this number automatically.
fixed_split_step_ int, defaults to 0. Step number to apply predefined split. If 0, use only random splits. if >0, sets up the usage of 6 fixed type splits on every fixed_split_step.
start_separate : bool, default False. Indicates if Combo should start from assigning each node into its own separate community. This could help to achieve higher modularity, but it makes execution much slower.
treat_as_modularity : bool, default False. Indicates if edge weights should be treated as modularity scores. If True, the algorithm solves clique partitioning problem over the given graph, treated as modularity graph (matrix). For example, this allows users to provide their own custom 'modularity' matrix. modularity_resolution is ignored in this case.
verbose : int, defaults to 0. Indicates how much progress information Combo should print out. For now Combo has only one level starting at verbose >= 1.
intermediate_results_path : Optional str, defaults to None. Path to the file where community assignments will be saved on each iteration. If None or empty, intermediate results will not be saved.
return_modularity : bool, defaults to True. Indicates if function should return achieved modularity score.
random_seed : int, defaults to None. Random seed to use. None indicates using some internal default value that is based on time and is expected to be different for each call.
Returns
partition : Dict{int : int}, community labels for each node.
modularity : float. Achieved modularity value. Only returned if return_modularity=True.
More examples can be found in example folder.
Development
This repo uses https://github.com/Alexander-Belyi/Combo as a git submodule.
So for local development, clone with --recurse-submodules flag, as:
git clone --recurse-submodules https://github.com/Casyfill/pyCombo
Or, if you've already cloned it without --recurse-submodules, run:
git submodule update --init --recursive
Package is built and managed via poetry.
to install dev version, run poetry install
To build distributions run poetry build.
Information
project web_site
paper
For personal and professional use. You cannot resell or redistribute these repositories in their original state.
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