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How evolution learns to generalise: Using the principles of learning theory to understand the evolution of developmental organisation

机译:进化如何学会概括:使用学习理论的原理来理解发展组织的进化

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摘要

One of the most intriguing questions in evolution is how organisms exhibit suitable phenotypic variation to rapidly adapt in novel selective environments. Such variability is crucial for evolvability, but poorly understood. In particular, how can natural selection favour developmental organisations that facilitate adaptive evolution in previously unseen environments? Such a capacity suggests foresight that is incompatible with the short-sighted concept of natural selection. A potential resolution is provided by the idea that evolution may discover and exploit information not only about the particular phenotypes selected in the past, but their underlying structural regularities: new phenotypes, with the same underlying regularities, but novel particulars, may then be useful in new environments. If true, we still need to understand the conditions in which natural selection will discover such deep regularities rather than exploiting ‘quick fixes’ (i.e., fixes that provide adaptive phenotypes in the short term, but limit future evolvability). Here we argue that the ability of evolution to discover such regularities is formally analogous to learning principles, familiar in humans and machines, that enable generalisation from past experience. Conversely, natural selection that fails to enhance evolvability is directly analogous to the learning problem of over-fitting and the subsequent failure to generalise. We support the conclusion that evolving systems and learning systems are different instantiations of the same algorithmic principles by showing that existing results from the learning domain can be transferred to the evolution domain. Specifically, we show that conditions that alleviate over-fitting in learning systems successfully predict which biological conditions (e.g., environmental variation, regularity, noise or a pressure for developmental simplicity) enhance evolvability. This equivalence provides access to a well-developed theoretical framework from learning theory that enables a characterisation of the general conditions for the evolution of evolvability.
机译:进化中最有趣的问题之一是生物如何表现出合适的表型变异,以快速适应新的选择性环境。这种可变性对于进化至关重要,但知之甚少。特别是,自然选择如何能促进在先前看不见的环境中促进适应性进化的发展组织?这种能力暗示了远见,这与短视的自然选择概念不符。进化不仅可以发现和利用过去选择的特定表型的信息,还可以发现和利用其潜在的结构规律性的信息,从而提供了一种潜在的解决方案:具有相同的基本规律性但新颖的特殊性的新表型可能在以下领域有用:新环境。如果为真,我们仍然需要了解自然选择会发现如此深的规律性的条件,而不是利用“快速修复”(即,短期内提供自适应表型但限制了未来发展性的修复)。在这里,我们认为进化发现这种规律性的能力在形式上类似于人类和机器所熟悉的学习原理,可以根据过去的经验进行概括。相反,无法增强可进化性的自然选择直接类似于过度拟合的学习问题以及随后的推广失败。通过证明来自学习领域的现有结果可以转移到进化领域,我们支持进化系统和学习系统是同一算法原理的不同实例的结论。具体而言,我们表明,减轻学习系统过度适应的条件可以成功预测哪些生物学条件(例如,环境变化,规律性,噪声或简化开发的压力)会增强可进化性。这种等效性为学习理论提供了进入发达的理论框架的通道,该理论框架能够表征演化能力发展的一般条件。

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