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Associative pattern retrieval by stochastic resonance in FitzHugh-Nagumo neural network

机译:Fitzhugh-Nagumo神经网络随机共振的关联模式检索

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We report stochastic resonance (SR) in an associative memory network which is composed of a FitzHugh-Nagumo neuron model. The network is modulated by a Gaussian white noise independent among neurons and times, and by a temporally sinusoidal pattern. The modulation pattern is used from a randomly flipped learning pattern which consists of 2 values pattern. We study the pattern retrieval properties by SR when the overlap between the original learning pattern and the modulation pattern decreases. The output of the network is more similar to the learning pattern than the modulation pattern when the overlap is greater than moderate values and the noise variance is in some ranges. When the effect becomes large with large weight, the retrieval region of the learning pattern is extended in the overlap and also contracted in the noise variance. These responses show that the network retrieves the learning pattern even when the modulation pattern is slightly different from the learning pattern. This comes from a cooperative phenomenon by interactions and the retrieval function by the associative memory network.
机译:我们在关联内存网络中报告随机谐振(SR),该谐振谐振(SR)由Fitzhugh-Nagumo神经元模型组成。网络由神经元和时间之间独立的高斯白噪声调制,以及时间上正弦图案。调制模式从由2个值图案组成的随机翻转的学习模式。当原始学习模式和调制模式之间的重叠减小时,我们通过SR研究模式检索属性。当重叠大于中等值时,网络的输出与学习模式更类似于比调制模式,并且噪声方差在一些范围内。当效果大的重量大时,学习模式的检索区域在重叠中延伸并且在噪声方差中也缩小。这些响应表明,即使当调制模式与学习模式略有不同时,该网络即使当调制模式略有不同。这通过交互和联想内存网络的检索功能来源来自合作现象。

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