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Classification capacity of a modular neural network implementing neurally inspired architecture and training rules

机译:实施神经启发性架构和训练规则的模块化神经网络的分类能力

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A three-layer neural network (NN) with novel adaptive architecture has been developed. The hidden layer of the network consists of slabs of single neuron models, where neurons within a slab-but not between slabs- have the same type of activation function. The network activation functions in all three layers have adaptable parameters. The network was trained using a biologically inspired, guided-annealing learning rule on a variety of medical data. Good training/testing classification performance was obtained on all data sets tested. The performance achieved was comparable to that of SVM classifiers. It was shown that the adaptive network architecture, inspired from the modular organization often encountered in the mammalian cerebral cortex, can benefit classification performance.
机译:已经开发了具有新颖的自适应架构的三层神经网络(NN)。网络的隐藏层由单个神经元模型的平板组成,其中平板内(而不是平板之间)的神经元具有相同类型的激活功能。所有三层中的网络激活功能都有可调整的参数。该网络使用了生物学启发的,指导性退火学习规则对各种医学数据进行了训练。在所有测试数据集上均获得了良好的培训/测试分类性能。实现的性能与SVM分类器相当。结果表明,在哺乳动物大脑皮层中经常遇到的模块化组织的启发下,自适应网络架构可以提高分类性能。

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