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Developing Architectures of Spiking Neural Networks by Using Grammatical Evolution Based on Evolutionary Strategy

机译:基于进化策略的语法演化,通过语法演变开发尖峰神经网络的架构

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The Artificial Neural Networks (ANNs) have been used for solving problems in many theoretical and practical areas. Advances on the field of ANNs have derived in Spiking Neural Networks (SNNs); which are considered as the third generation of ANNs. SNNs receive/send the information by timing of events (spikes) instead by the spike rate; as their predecessors do. Although SNNs are capable to solve some functions with fewer neurons than networks of previous generations, there aren't rules to set the architecture of any kind of ANN for solving a specific task; usually the architecture is set empirically based on the designer's experience and the neural network's performance over the problem. Recently, metaheuristic algorithms are being implemented to optimize some aspect on ANNs such as weight, connections and even the architecture. This work proposes a generic framework for automatic construction of Fully-Connected Feed-Forward Spiking Neural Networks through an indirect representation by means of Grammatical Evolution (GE) based on Evolutionary Strategy (ES) algorithm. Two well-known benchmarks datasets of pattern recognition were used for testing the proposal of this paper.
机译:人工神经网络(ANNS)已被用于解决许多理论和实践区域的问题。关于ANNS领域的进展衍生在尖刺神经网络(SNNS)中;这被认为是第三代Anns。 SNNS通过Spike率来通过事件(尖峰)的时间来接收/发送信息;因为他们的前辈们。虽然SNN能够用比前几代网络的网络解决一些函数,但是没有规则来设置任何ANN的架构,用于解决特定任务;通常,该架构基于设计师的经验和神经网络对问题的性能进行了经验。最近,正在实施成逐算法以优化ANN的某些方面,例如权重,连接甚至架构。这项工作提出了一种通过基于进化策略(ES)算法的语法演进(GE)的间接表示自动构造完全连接的前馈尖刺神经网络的通用框架。图案识别的两个众所周知的基准数据集用于测试本文的提议。

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