Heuristic optimization of graph embedding problems in circular layouts
Archivos
Fecha
2023
Autores
Título de la revista
ISSN de la revista
Título del volumen
Editor
Universidad Rey Juan Carlos
Resumen
Optimization is a discipline that addresses the search for the best possible solution, called
the optimal solution, to a problem mathematically modeled. These problems can be classified
according to its computational complexity. Problems belonging to the NP-hard class
are too complex to be solved with an exact algorithm in a reasonable amount of time. Alternatively,
these problems can be approached through approximate techniques that allow
finding good quality solutions, although not necessarily optimal, in a reasonable amount
of computing time. Among these techniques, heuristic and metaheuristic algorithms stand
out, since they have been proven as useful tools in solving high-complexity real problems.
In this Doctoral Thesis, heuristic and metaheuristic algorithms are proposed for the
resolution of four Graph Layout Problems (GLP). Specifically, the problems studied belong
to the NP-hard class and can be framed as combinatorial optimization problems. GLPs aim
to find the best possible assignment of the vertices of an input graph to the vertices of a
host graph, optimizing a certain objective function. More specifically, this Doctoral Thesis
focuses on the study of GLPs in which the embedding is done in circular layouts. This
family of problems is of great interest due to the variety of practical applications they have.
In this research, a methodology for addressing GLPs is proposed. Specifically, it starts
from the study of each problem, and then proposes heuristic and metaheuristic algorithms
for tackling the problem. After a preliminary experimentation, the algorithmic proposal
is compared to the existing methods in the state of the art. This methodology has been
successfully applied to the studied problems, resulting in various scientific publications
that compile the main findings of the research carried out.
Descripción
This Doctoral Thesis has been partially supported by the Ministerio de Ciencia, Innovación y Universidades (Grant Ref. PGC2018-095322-B-C22, PID2021-125709OA-C22,
FPU19/04098, and EST22/00444) and by the Comunidad de Madrid and the Fondo Europeo
de Desarrollo Regional (Grant Ref. P2018/TCS-4566).
Copyright ©2023 Sergio Cavero Díaz. All rights reserved.
Palabras clave
Citación
Colecciones
Excepto si se señala otra cosa, la licencia del ítem se describe como Attribution-NonCommercial-NoDerivatives 4.0 Internacional