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Evolution of Cooperating ANNs Through Functional Phenotypic Affinity

机译:通过功能表型亲和力合作ANN的演变

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This work deals with the problem of automatically obtaining ANNs that cooperate in modelling of complex functions. We propose an algorithm where the combination of networks takes place at the phenotypic operational level. Thus, we evolve a population of networks that are automatically classified into different species depending on the performance of their phenotype, and individuals of each species cooperate forming a group to obtain a complex output. The components that make up the groups are basic ANNs (primitives) and could be reused in other search processes as seeds or could be combined to generate new solutions. The magnitude that reflects the difference between ANNs is their affinity vector, which must be automatically created and modified. The main objective of this approach is to model complex functions such as environment models in robotics or multidimensional signals.
机译:这项工作涉及自动获取合作复杂功能建模的ANN的问题。我们提出了一种算法,其中网络的组合在表型运营层面进行。因此,根据其表型的性能,我们将一群网络自动分为不同物种,并且每个物种的个体配合形成一个组以获得复杂的输出。构成组的组件是基本的ANNS(基元),并且可以在其他搜索过程中重用作为种子,或者可以组合以生成新的解决方案。反映ANNS之间的差异的幅度是它们的亲和向量,必须自动创建和修改。这种方法的主要目标是建模复杂的功能,例如机器人或多维信号中的环境模型。

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