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Interval-valued evolution strategy for evolving neural networks with interval weights and biases

机译:具有区间权重和偏差的演化神经网络的区间值演化策略

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In this paper, we propose an extension of evolution strategy (ES) for evolving interval-valued neural networks. In the proposed ES, values in the genotypes are not real numbers but intervals. We apply our interval-valued ES (IES) to the approximate modeling of interval functions with interval-valued neural networks (INNs). Experimental results showed that INNs trained by our IES could well approximate a hidden test function, despite the fact that the learning was not supervised.
机译:在本文中,我们提出了一种用于发展区间值神经网络的进化策略(ES)的扩展。在提出的ES中,基因型中的值不是实数而是间隔。我们将区间值ES(IES)应用于具有区间值神经网络(INN)的区间函数的近似建模。实验结果表明,尽管没有对学习进行监督,但由我们的IES训练的INN可以很好地近似隐藏的测试功能。

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