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Will Selection for Mutational Robustness Significantly Retard Evolutionary Innovation on Neutral Networks?

机译:将在中性网络中选择突变鲁棒性显着延迟进化创新吗?

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As a population evolves, its members are under selection both for rate of reproduction (fitness) and mutational robustness. For those using evolutionary algorithms as optimisation techniques, this second selection pressure can sometimes be beneficial, but it can also bias evolution in unwelcome and unexpected ways. Here, the role of selection for mutational robustness in driving adaptation on neutral networks is explored. The behaviour of a standard genetic algorithm is compared with that of a search algorithm designed to be immune to selection for mutational robustness. Performance on an RNA folding landscape suggests that selection for mutational robustness, at least sometimes, will not unduly retard the rate of evolutionary innovation enjoyed by a genetic algorithm. Two classes of random landscape are used to explore the reasons for this result.
机译:随着人口的发展,其成员都在选择繁殖(健身)和突变稳健性方面的选择。对于那些使用进化算法作为优化技术的人来说,这种第二选择压力有时可以是有益的,但它也可以在不受欢迎和意外的方式中偏离演化。在这里,探讨了选择在中立网络上驾驶适应方面的突变鲁棒性的作用。将标准遗传算法的行为与设计为免疫选择的搜索算法的行为进行了比较,以实现突变鲁棒性。在RNA折叠景观上的性能表明,选择突变鲁棒性,至少有时,不会过度延迟遗传算法享有的进化创新速度。两类随机景观用于探索此结果的原因。

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