acristofari / fast-atvo

Community detection in undirected graphs with non-negative weights

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Community detection in undirected graphs

Fast Active-SeT based Approximate Total Variation Optimization (FAST-ATVO) is a solver for community detection problems in undirected graphs with non-negative weights, using a non-linear optimization approach.

Reference paper

A. Cristofari, F. Rinaldi, F. Tudisco (2020). Total Variation Based Community Detection Using a Nonlinear Optimization Approach. SIAM Journal on Applied Mathematics, 80(3), 1392-1419.

Authors

Licensing

FAST-ATVO is free software: you can redistribute it and/or modify it under the terms of the GNU General Public License as published by the Free Software Foundation, either version 3 of the License, or (at your option) any later version. FAST-ATVO is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for more details. You should have received a copy of the GNU General Public License along with FAST-ATVO. If not, see http://www.gnu.org/licenses/.

Copyright 2019-2022 Andrea Cristofari, Francesco Rinaldi, Francesco Tudisco.

How to use FAST-ATVO

  1. This directory should contain the following files:

    • COPYING.txt,
    • ExampleGraph.txt,
    • ExampleX0.txt,
    • fast_atvo.cpp,
    • fast_atvo.h,
    • graph.h,
    • main.cpp,
    • README.md,

    plus a subdirectory named matlab, which should contain the following files:

    • example_graph.mat,
    • fast_atvo_matlab.cpp,
    • main.m,
    • make.m,
    • usage.txt.
  2. You can call FAST-ATVO either from the command prompt (see 2a) or from Matlab (see 2b).

    2a. How to call FAST-ATVO from the command prompt

    • Prepare a text file with the weight matrix expressed as a square upper triangular matrix. Each line of the text file must have the following form:

      where any tern (ih, jh wh) represents an edge between the nodes ih and jh with non-negative weight wh.

      It must hold i1 ≤ i2 ≤ i3 <= ..., i.e., the first nodes of the terns must be written in a non-decreasing order.

      Note that, since the weight matrix must be upper triangular, it must also hold that i1 ≤ j1, i2 ≤ j2, i3 ≤ j3, ....

      Unspecified weights between two nodes are assumed to be zero (so that only positive weights must be specified).

      For instance, consider the following weight matrix:

      A valid text file will be:

      1,2 0.9 1,3 1.5 1,4 2
      3,4 0.8 3,5 1.1
      4,5 0.3
      

      Equivalently, lines can even be broken or joined together. This means that also a text file of the following form will be valid:

      1,2 0.9 1,3 1.5 1,4 2 3,4 0.8
      3,5 1.1 4,5 0.3
      
    • Prepare a text file with the starting point of the algorithm. Each line of the text file must contain scalars separated by blank spaces (one value per line is also allowed).

      The starting point must be a vector of length equal to the number of nodes.

      For instance, consider the following starting point:

      A valid text file will be:

      0
      1
      -0.3
      0
      0.2
      

      Equivalently, lines can even be broken or joined together. This means that also a text file of the following form will be valid:

      0 1 -0.3
      0 0.2
      
    • Compile the files fast_atvo.cpp and main.cpp, then create the executable fast_atvo. To run FAST-ATVO, you have to type in the command prompt

      fast_atvo GraphFile X0File [options]
      

      where GraphFile is the name of the file with the weight matrix, X0File is the name of the file with the starting point of the algorithm and [options] are optional input arguments that allow the user to modify some algorithm parameters and to print the final results to files. In particular, [options] must have the following form:

      -c string
         It is the name of the file where the communities found by
         FAST-ATVO are printed as a 0-1 vector (if the file does not
         exist, then it will be created, whereas existing files with
         the same name will be overwritten).
         If not specified, by default no file is created.
      -m string
         It is the name of the file where the modularity value of the
         communities found by FAST-ATVO is printed (if the file does not
         exist, then it will be created, whereas existing files with the
         same name will be overwritten).
         If not specified, by default no file is created.
      -s string
         It is the name of the file where the solution found by the
         optimization algorithm is printed (if the file does not exist,
         then it will be created, whereas existing files with the same
         name will be overwritten).
         If not specified, by default no file is created.
      -p number greater than 1
         It is the exponent parameter of the objective function.
         If not specified, by default it is equal to 1.4.
      -w number greater than or equal to 1
         It is the maximum size of the working set in the optimization
         algorithm.
         If not specified, by default it is equal to
         max(10,min(1000,0.03*n)), where 'n' is the number of
         non-isolated nodes.
      -i number greater than or equal to 1
         It is the number of outer iterations for the globalization
         strategy.
         If not specified, by default it is equal to 1, i.e., the
         globalization strategy is not activated.
      -l number less than 0
         It is the lower bound on the variables for the optimization
         problem.
         If not specified, by default it is equal to -1.
      -u number greater than 0
         It is the upper bound on the variables for the optimization
         problem.
         If not specified, by default it is equal to 1.
      -r number between 0 and 1
         It is the percentage of negative and positive variables that
         will be set to the lower and upper bound in x0, respectively.
         If not specified, by default it is equal to 1, i.e., all
         non-zero variables in x0 will be set to the bounds.
      -v number between 0 and 2
         It is the verbosity level, to print iteration details of the
         optimization algorithm.
         If not specified, by default it is equal to 0, i.e., there are
         no prints.
      
    • When the algorithm is terminated, final results can be found in the files specified in the options (if any). Moreover, if verbosity was activated, a file named iteration_history.txt is created, where the iteration details of the optimization algorithm are reported.

    • Here is an example.

      Consider the two files ExampleGraph.txt and ExampleX0.txt included in this folder. They contain a weight matrix and a starting point of the algorithm, respectively, according to the above described format. Create the executable fast_atvo by compiling the files fast_atvo.cpp and main.cpp, then type

      fast_atvo ExampleGraph.txt ExampleX0.txt -c ExampleC.txt
      

      so that the communities found by FAST-ATVO will be printed to the file ExampleC.txt.

      Or, if you also wish to print synthetic iteration details of the optimization algorithm, you may type

      fast_atvo ExampleGraph.txt ExampleX0.txt -c ExampleC.txt -v 1 
      

    2b. How to call FAST-ATVO from Matlab

    • Move to the subdirectory matlab and run make.m to build the MEX file.

    • See the file usage.txt to know how to call FAST-ATVO from Matlab, change algorithm parameters and get output values.

    • See the file main.m for an example. To run the example, just call main.m in Matlab.

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Community detection in undirected graphs with non-negative weights

License:GNU General Public License v3.0


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