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Pattern stability on complex-valued associative memory by local iterative learning scheme

机译:局部迭代学习方案在复值联想记忆上的模式稳定性

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摘要

Stability of embedded patterns on associative memory is investigated in this paper. The associative memory is composed of complex-valued Hopfield neural network, in which the state of neurons are encoded by the phase values on a unit circle of complex plane. Local iterative learning scheme and Projection rule are used for embedding the patterns onto the network. The retaining performance for embedded patterns are evaluated through storing randomly generated patterns and gray-scaled images with changing the resolution of neuron state.
机译:本文研究了关联存储器上嵌入模式的稳定性。联想记忆由复值Hopfield神经网络组成,其中神经元的状态由复平面的单位圆上的相位值编码。局部迭代学习方案和投影规则用于将模式嵌入到网络中。通过存储随机生成的图案和灰度图像并改变神经元状态的分辨率,可以评估嵌入图案的保留性能。

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