A Novel Meta-Heuristic Optimization Algorithm Inspired by the Spread of
Viruses
- URL: http://arxiv.org/abs/2006.06282v1
- Date: Thu, 11 Jun 2020 09:35:28 GMT
- Title: A Novel Meta-Heuristic Optimization Algorithm Inspired by the Spread of
Viruses
- Authors: Zhixi Li and Vincent Tam
- Abstract summary: A novel nature-inspired meta-heuristic optimization algorithm called virus spread optimization (VSO) is proposed.
VSO loosely mimics the spread of viruses among hosts, and can be effectively applied to solving many challenging and continuous optimization problems.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: According to the no-free-lunch theorem, there is no single meta-heuristic
algorithm that can optimally solve all optimization problems. This motivates
many researchers to continuously develop new optimization algorithms. In this
paper, a novel nature-inspired meta-heuristic optimization algorithm called
virus spread optimization (VSO) is proposed. VSO loosely mimics the spread of
viruses among hosts, and can be effectively applied to solving many challenging
and continuous optimization problems. We devise a new representation scheme and
viral operations that are radically different from previously proposed
virus-based optimization algorithms. First, the viral RNA of each host in VSO
denotes a potential solution for which different viral operations will help to
diversify the searching strategies in order to largely enhance the solution
quality. In addition, an imported infection mechanism, inheriting the searched
optima from another colony, is introduced to possibly avoid the prematuration
of any potential solution in solving complex problems. VSO has an excellent
capability to conduct adaptive neighborhood searches around the discovered
optima for achieving better solutions. Furthermore, with a flexible infection
mechanism, VSO can quickly escape from local optima. To clearly demonstrate
both its effectiveness and efficiency, VSO is critically evaluated on a series
of well-known benchmark functions. Moreover, VSO is validated on its
applicability through two real-world examples including the financial portfolio
optimization and optimization of hyper-parameters of support vector machines
for classification problems. The results show that VSO has attained superior
performance in terms of solution fitness, convergence rate, scalability,
reliability, and flexibility when compared to those results of the conventional
as well as state-of-the-art meta-heuristic optimization algorithms.
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