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Are binary synapses superior to graded weight representations in stochastic attractor networks?

机译:二元突触是否优于随机吸引子网络中的分级权重表示?

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摘要

Synaptic plasticity is an underlying mechanism of learning and memory in neural systems, but it is controversial whether synaptic efficacy is modulated in a graded or binary manner. It has been argued that binary synaptic weights would be less susceptible to noise than graded weights, which has impelled some theoretical neuroscientists to shift from the use of graded to binary weights in their models. We compare retrieval performance of models using both binary and graded weight representations through numerical simulations of stochastic attractor networks. We also investigate stochastic attractor models using multiple discrete levels of weight states, and then investigate the optimal threshold for dilution of binary weight representations. Our results show that a binary weight representation is not less susceptible to noise than a graded weight representation in stochastic attractor models, and we find that the load capacities with an increasing number of weight states rapidly reach the load capacity with graded weights. The optimal threshold for dilution of binary weight representations under stochastic conditions occurs when approximately 50% of the smallest weights are set to zero.
机译:突触可塑性是神经系统中学习和记忆的基本机制,但是否以分级或二元方式调节突触功效尚存争议。有人认为,二元突触权重比分级权重更不易受到噪声的影响,这已促使一些理论神经学家从模型中使用分级权重转变为二进制权重。我们通过随机吸引子网络的数值模拟比较使用二进制和分级权重表示的模型的检索性能。我们还研究了使用多个离散水平的权重状态的随机吸引子模型,然后研究了二进制权重表示形式的最佳稀释阈值。我们的结果表明,在随机吸引器模型中,二元权重表示不比分级权重表示更容易受到噪声的影响,并且我们发现,随着权重状态数量的增加,负载能力迅速达到具有分级权重的负载能力。当最小权重的大约50%设置为零时,将出现随机条件下二进制权重表示形式稀释的最佳阈值。

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