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首页> 外文期刊>International Journal of Neural Systems >Artificial Neuron-Glia Networks Learning Approach Based on Cooperative Coevolution
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Artificial Neuron-Glia Networks Learning Approach Based on Cooperative Coevolution

机译:基于协同进化的人工神经元-神经胶质网络学习方法

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Artificial Neuron-Glia Networks (ANGNs) are a novel bio-inspired machine learning approach. They extend classical Artificial Neural Networks (ANNs) by incorporating recent findings and suppositions about the way information is processed by neural and astrocytic networks in the most evolved living organisms. Although ANGNs are not a consolidated method, their performance against the traditional approach, i.e. without artificial astrocytes, was already demonstrated on classification problems. However, the corresponding learning algorithms developed so far strongly depends on a set of glial parameters which are manually tuned for each specific problem. As a consequence, previous experimental tests have to be done in order to determine an adequate set of values, making such manual parameter configuration time-consuming, error-prone, biased and problem dependent. Thus, in this paper, we propose a novel learning approach for ANGNs that fully automates the learning process, and gives the possibility of testing any kind of reasonable parameter configuration for each specific problem. This new learning algorithm, based on coevolutionary genetic algorithms, is able to properly learn all the ANGNs parameters. Its performance is tested on five classification problems achieving significantly better results than ANGN and competitive results with ANN approaches.
机译:人工神经元神经胶质网络(ANGNs)是一种新颖的生物启发式机器学习方法。他们通过结合关于在进化最广泛的生物中神经和星形细胞网络处理信息的方式的最新发现和假设,扩展了经典的人工神经网络(ANN)。尽管ANGNs不是一种综合方法,但已经证明了它们对传统方法的性能,即没有人造星形胶质细胞的性能。但是,迄今为止开发的相应的学习算法在很大程度上取决于为每个特定问题手动调整的神经胶质参数集。结果,必须进行先前的实验测试以确定一组适当的值,从而使这种手动参数配置耗时,容易出错,有偏见且取决于问题。因此,在本文中,我们为ANGNs提出了一种新颖的学习方法,该方法可以完全自动化学习过程,并提供了针对每个特定问题测试任何种类的合理参数配置的可能性。这种基于协同进化遗传算法的新学习算法能够正确学习所有ANGNs参数。在五个分类问题上测试了它的性能,这些问题比ANGN的结果明显好得多,并且使用ANN方法具有竞争性的结果。

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