Hundreds of Evolutionary Computation approaches have been reported. From an evolutionary perspective they focus on two fundamental mechanisms: cultural inheritance in Swarm Intelligence and genetic inheritance in Evolutionary Algorithms. Contemporary evolutionary biology looks beyond genetic inheritance, proposing a so-called ``Extended Evolutionary Synthesis''. Many concepts from the Extended Evolutionary Synthesis have been left out of Evolutionary Computation as interest has moved toward specific implementations of the same general mechanisms. One such concept is epigenetic inheritance, which is increasingly considered central to evolutionary thinking. Epigenetic mechanisms allow quick non- or partially-genetic adaptations to environmental changes. Dynamic multi-objective optimisation problems represent similar circumstances to the natural world where fitness can be determined by multiple objectives (traits), and the environment is constantly changing. This paper asks if the advantages that epigenetic inheritance provide in the natural world are replicated in dynamic multi-objective optimisation problems. Specifically, an epigenetic blocking mechanism is applied to a state-of-the-art multi-objective genetic algorithm, MOEA/D-DE, and its performance is compared on three sets of dynamic test functions, FDA, JY, and UDF. The mechanism shows improved performance on 12 of the 16 test problems, providing initial evidence that more algorithms should explore the wealth of epigenetic mechanisms seen in the natural world.
翻译:报告了数百种进化计算方法。从进化角度看,它们侧重于两个基本机制:Swarm Intelligence的文化遗产继承和进化地算法的遗传遗产。当代进化生物学超越遗传遗产,提出了所谓的“扩展进化合成”。扩展进化合成的许多概念被从进化计算法中排除,因为人们的兴趣已经转向具体实施相同的总体机制。一个概念是子遗传遗产,它日益被视为进化思维的核心。进化机制允许对环境变化迅速进行非遗传或部分遗传适应。动态多目标优化问题代表着与自然世界类似的情况,而自然世界的健身可以由多重目标(轨迹)决定,环境也在不断变化。本文询问,自然世界的遗传遗产带来的优势是否在动态的多目标优化问题上被复制。具体地说,一个子遗传封存机制被应用到进化的进化思维中,日益被视为进化思维的核心。一个最先进的遗传算法,MOEA/DDE,其性能与自然世界的三套动态测试功能相比,FRA、JY和AFDF在16个初步测试机制中应该展示更先进的世界的成熟的成熟的测试。