This work builds upon Efficient Vertex Cover Approximation via Iterative Dominating Set Transformations.
The Minimum Vertex Cover (MVC) problem is a classic optimization problem in computer science and graph theory. It involves finding the smallest set of vertices in a graph that covers all edges, meaning at least one endpoint of every edge is included in the set.
Given an undirected graph $G = (V, E)$, a vertex cover is a subset $V' \subseteq V$ such that for every edge $(u, v) \in E$, at least one of $u$ or $v$ belongs to $V'$. The MVC problem seeks the vertex cover with the smallest cardinality.
Input: A Boolean Adjacency Matrix $M$.
Answer: Find a Minimum Vertex Cover.
c1 | c2 | c3 | c4 | c5 | |
---|---|---|---|---|---|
r1 | 0 | 0 | 1 | 0 | 1 |
r2 | 0 | 0 | 0 | 1 | 0 |
r3 | 1 | 0 | 0 | 0 | 1 |
r4 | 0 | 1 | 0 | 0 | 0 |
r5 | 1 | 0 | 1 | 0 | 0 |
The input for undirected graph is typically provided in DIMACS format. In this way, the previous adjacency matrix is represented in a text file using the following string representation:
p edge 5 4
e 1 3
e 1 5
e 2 4
e 3 5
This represents a 5x5 matrix in DIMACS format such that each edge $(v,w)$ appears exactly once in the input file and is not repeated as $(w,v)$. In this format, every edge appears in the form of
e W V
where the fields W and V specify the endpoints of the edge while the
lower-case character e
signifies that this is an edge
descriptor line.
Example Solution:
Vertex Cover Found 2, 3, 5
: Nodes 2
,
3
, and 5
constitute an optimal solution.
pip install varela
Clone the repository:
git clone https://github.com/frankvegadelgado/varela.git
cd varela
Run the script:
cover -i ./benchmarks/testMatrix1
utilizing the cover
command provided by Varela's Library
to execute the Boolean adjacency matrix
varela\benchmarks\testMatrix1
. The file
testMatrix1
represents the example described herein. We
also support .xz
, .lzma
, .bz2
,
and .bzip2
compressed text files.
Example Output:
testMatrix1: Vertex Cover Found 2, 3, 5
This indicates nodes 2, 3, 5
form a vertex cover.
Use the -c
flag to count the nodes in the vertex cover:
cover -i ./benchmarks/testMatrix2 -c
Output:
testMatrix2: Vertex Cover Size 5
Display help and options:
cover -h
Output:
usage: cover [-h] -i INPUTFILE [-a] [-b] [-c] [-v] [-l] [--version]
Compute the Approximate Vertex Cover for undirected graph encoded in DIMACS format.
options:
-h, --help show this help message and exit
-i INPUTFILE, --inputFile INPUTFILE
input file path
-a, --approximation enable comparison with a polynomial-time approximation approach within a factor of at most 2
-b, --bruteForce enable comparison with the exponential-time brute-force approach
-c, --count calculate the size of the vertex cover
-v, --verbose anable verbose output
-l, --log enable file logging
--version show program's version number and exit
Batch execution allows you to solve multiple graphs within a directory consecutively.
To view available command-line options for the
batch_cover
command, use the following in your terminal or
command prompt:
batch_cover -h
This will display the following help information:
usage: batch_cover [-h] -i INPUTDIRECTORY [-a] [-b] [-c] [-v] [-l] [--version]
Compute the Approximate Vertex Cover for all undirected graphs encoded in DIMACS format and stored in a directory.
options:
-h, --help show this help message and exit
-i INPUTDIRECTORY, --inputDirectory INPUTDIRECTORY
Input directory path
-a, --approximation enable comparison with a polynomial-time approximation approach within a factor of at most 2
-b, --bruteForce enable comparison with the exponential-time brute-force approach
-c, --count calculate the size of the vertex cover
-v, --verbose anable verbose output
-l, --log enable file logging
--version show program's version number and exit
A command-line utility named test_cover
is provided for
evaluating the Algorithm using randomly generated, large sparse matrices.
It supports the following options:
usage: test_cover [-h] -d DIMENSION [-n NUM_TESTS] [-s SPARSITY] [-a] [-b] [-c] [-w] [-v] [-l] [--version]
The Varela Testing Application using randomly generated, large sparse matrices.
options:
-h, --help show this help message and exit
-d DIMENSION, --dimension DIMENSION
an integer specifying the dimensions of the square matrices
-n NUM_TESTS, --num_tests NUM_TESTS
an integer specifying the number of tests to run
-s SPARSITY, --sparsity SPARSITY
sparsity of the matrices (0.0 for dense, close to 1.0 for very sparse)
-a, --approximation enable comparison with a polynomial-time approximation approach within a factor of at most 2
-b, --bruteForce enable comparison with the exponential-time brute-force approach
-c, --count calculate the size of the vertex cover
-w, --write write the generated random matrix to a file in the current directory
-v, --verbose anable verbose output
-l, --log enable file logging
--version show program's version number and exit