Skip to content

bendico765/random_walk_controversy

Repository files navigation

Random Walk Controversy

Tests

This repo contains a parallel implementation of Kiran Garimella's algorithm to compute the random walk controversy score of a graph.

Let G(V,E) be a graph with two partitions X and Y; in the paper "Quantifying Controversy on Social Media" Garimella et al. define the Random Walk Controversy (RWC) measure as follows: "Consider two random walks, one ending in partition X and one ending in partition Y , RWC is the difference of the probabilities of two events: (i) both random walks started from the partition they ended in and (ii) both random walks started in a partition other than the one they ended in.”.
The measure is quantified as $RWC = P_{XX}P_{YY} - P_{YX}P_{XY}$ where $P_{AB}$ is the conditional probability $P_{AB} = Pr[\mbox{start in partition }A \mid \mbox{end in partition }B]$.

Since the probabilities are computed by making simulations consisting in random walks and the simulations are independent of each other, they can easily be done in parallel.
The following table shows the performance and results comparison made between the (sequential) implementation provided by one of the original authors and this implementation. The datasets can be found in the same repo as the original authors' implementation.

Dataset Seq. time (s) Seq. RWC score Par. time (s) Par. RWC score Speedup
baltimore 618 0.869 71 0.872 8.70
beefban 128 0.873 19 0.882 6.73
gunsense 2232 0.851 221 0.853 10.10
indiana 229 0.720 37 0.727 6.19
indiasdaughter 490 0.825 62 0.832 7.90

Beside the evident speedup obtained by exploiting a multicore architecture, we can see that the sequential and parallel versions almost converge to the same results.

Installation

To install the latest version of the library just download (or clone) the current project, open a terminal and run the following commands:

pip install -r requirements.txt
pip install .

Alternatively use pip

pip install random-walk-controversy

Usage

Command line interface

python3 -m random_walk_controversy [-h] [-v] [-l] edgelist community1_nodelist community2_nodelist percent n

More info about the parameters can be fetched by using the -h option.
The option -v can be used to increase output verbosity and print, alongside the rwc score, the statistics about random walks. If not specified, only the RWC score is printed out.
Finally, the -l option displays a log on the terminal everytime a simulation is completed; I have found this option pretty usefully since it allows to estimate the time for the algorithm to complete and understand if the algorithm got stuck.

Python library

After the installation, it is possible to compute the rwc score directly in the python interpreter by using the function get_rwc inside the random_walk_controversy package.

Example

>>> from random_walk_controversy import get_rwc
>>> graph = read_edgelist()
>>> side1_nodes = read_nodelist()  # list of nodes belonging to partition 1
>>> side2_nodes = read_nodelist()  # list of nodes belonging to partition 2
>>> node_percentage = 0.3
>>> number_simulations = 1000
>>> get_rwc(graph, side1_nodes, side2_nodes, node_percentage, number_simulations)
76.233

About

A parallel algorithm to compute the Random Walk Controversy score of a network.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages