Many biological processes have been the source of inspiration for heuristic methods that generate high-quality solutions to solve optimization and search problems. This thesis presents an epigenetic technique for Evolutionary Algorithms, inspired by the epigenetic regulation process, a mechanism to better understand the ability of individuals to adapt and learn from the environment. Epigenetic regulation comprises biological mechanisms by which small molecules, also known as epigenetic tags, are attached to or removed from a particular gene, affecting the phenotype. Five fundamental elements form the basis of the designed technique: first, a metaphorical representation of Epigenetic Tags as binary strings; second, a layer on chromosome top structure used to bind the tags (the Epigenotype layer); third, a Marking Function to add, remove, and modify tags; fourth, an Epigenetic Growing Function that acts like an interpreter, or decoder of the tags located over the alleles, in such a way that the phenotypic variations can be reflected when evaluating the individuals; and fifth, a tags inheritance mechanism. A set of experiments are performed for determining the applicability of the proposed approach.
翻译:许多生物过程是启发产生解决优化和搜索问题的高质量解决方案的超自然方法的灵感来源。本论文为进化算术提供了受进化算术进程启发的进化算术的遗传技术,这是更好地了解个人适应和从环境中学习的能力的机制。遗传调节包括生物机制,小分子(又称后继标记)被附于或从特定基因中移除,影响人型。五个基本要素构成设计技术的基础:第一,以隐喻形式表示异基因标记作为二进制字符串;第二,以染色体顶部结构为一层,用来捆绑标签(Epigeno型图层);第三,添加、删除和修改标记的标记功能;第四,以解释或分解位于异基因类上的标记等功能。在评价个人时,可以反映异基因图变;第五,采用标签继承机制,进行一套实验,用以确定拟议的适用性。