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Grammatical Swarm and Particle Swarm Optimization models applied to Neural Network learning and topology definition

机译:基于神经网络学习和拓扑定义的语法群和粒子群优化模型

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摘要

There exists a clear difference between cooperative and competitive strategies. The former ones are based on the swarm colonies, in which all individuals share its knowledge about the goal in order to pass such information to other individuals to get optimum solution. The latter ones are based on genetic models, that is, individuals can die and new individuals are created combining information of alive one; or are based on molecular/celular behaviour passing information from one structure to another. A Grammatical Swarm model is applied to obtain the Neural Network topology of a given problem, training the net with a Particle Swarm algorithm. This paper just shows some ideas in order to obtain an automatic way to define the most suitable neural network topology for a given patter set.
机译:合作与竞争战略之间存在明显的差异。前者是基于群体殖民地,其中所有个人都与目标分享了其知识,以便将这些信息传递给其他人获得最佳解决方案。后者基于遗传模型,即个体可以死亡,并且创建了一个相结合的活力的人;或者基于将信息从一个结构传递给另一个结构的分子/孔径行为。应用了语法群模型来获得给定问题的神经网络拓扑,用粒子群算法训练网络。本文仅显示了一些想法,以便获得自动方法以为给定的持久组定义最合适的神经网络拓扑。

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