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Artificial Ecosystem Selection for Evolutionary Optimisation

机译:进化优化的人工生态系统选择

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Artificial selection of microbial ecosystems for their collective function has been shown to be effective in laboratory experiments. In previous work, we used evolutionary simulation models to understand the mechanistic basis of the observed ecosystem-level response to artificial selection. Here we extend this work to consider artificial ecosystem selection as a method for evolutionary optimisation. By allowing solutions involving multiple species, artificial ecosystem selection adds a new class of multi-species solution to the available search space, while retaining all the single-species solutions achievable by lower-level selection methods. We explore the conditions where multi-species solutions (that necessitate higher-level selection) are likely to be found, and discuss the potential advantages of artificial ecosystem selection as an optimisation method.
机译:在实验室实验中,针对微生物生态系统的集体功能进行人工选择已被证明是有效的。在以前的工作中,我们使用进化模拟模型来了解观察到的生态系统对人工选择的响应的机制基础。在这里,我们将这项工作扩展为将人工生态系统选择视为进化优化方法。通过允许涉及多个物种的解决方案,人工生态系统选择为可用的搜索空间增加了新的一类多物种解决方案,同时保留了所有可通过低级选择方法实现的单物种解决方案。我们探讨了可能找到多物种解决方案(需要更高级别的选择)的条件,并讨论了作为优化方法的人工生态系统选择的潜在优势。

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