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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Evolving Local Plasticity Rules for Synergistic Learning in Echo State Networks
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Evolving Local Plasticity Rules for Synergistic Learning in Echo State Networks

机译:Echo状态网络中协同学习的局部可塑性规则

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摘要

Existing synaptic plasticity rules for optimizing the connections between neurons within the reservoir of echo state networks (ESNs) remain to be global in that the same type of plasticity rule with the same parameters is applied to all neurons. However, this is biologically implausible and practically inflexible for learning the structures in the input signals, thereby limiting the learning performance of ESNs. In this paper, we propose to use local plasticity rules that allow different neurons to use different types of plasticity rules and different parameters, which are achieved by optimizing the parameters of the local plasticity rules using the evolution strategy (ES) with covariance matrix adaptation (CMA-ES). We show that evolving neural plasticity will result in a synergistic learning of different plasticity rules, which plays an important role in improving the learning performance. Meanwhile, we show that the local plasticity rules can effectively alleviate synaptic interferences in learning the structure in sensory inputs. The proposed local plasticity rules are compared with a number of the state-of-the-art ESN models and the canonical ESN using a global plasticity rule on a set of widely used prediction and classification benchmark problems to demonstrate its competitive learning performance.
机译:用于优化回波状态网络(ESNS)内的神经元(ESNS)内的神经元之间的连接的现有突触塑性规则仍然是全球性的,因为对所有神经元应用具有相同参数的相同类型的可塑性规则。然而,这是生物学上难以置信的,并且实际上对于在输入信号中学习结构,因此限制了ESN的学习性能。在本文中,我们建议使用允许不同的神经元使用不同类型的可塑性规则和不同参数的局部可塑性规则,这是通过利用协方差矩阵适应的演化策略优化本地可塑性规则的参数来实现的CMA-es)。我们表明,不断发展的神经可塑性将产生不同的可塑性规则的协同学习,这在提高学习性能方面起着重要作用。同时,我们表明本地可塑性规则可以有效缓解在感觉投入中学习结构的突触干扰。将拟议的本地可塑性规则与许多最先进的ESN模型和规范ESN进行比较,并使用全球可塑性规则对一组广泛使用的预测和分类基准问题进行展示其竞争性学习性能。

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