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Structured information in sparse-code metric neural networks

机译:稀疏代码度量神经网络中的结构化信息

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摘要

Sparse-code networks have retrieval abilities which are strongly dependent on the firing threshold for the neurons. If the connections are spatially uniform, the macroscopic properties of the network can be measured by the overlap between neurons and learned patterns, and by the global activity. However, for nonuniform networks, for instance small-world networks, the neurons can retrieve fragments of patterns without performing global retrieval. Local overlaps are needed to describe the network. We characterize the structure type of the neural states using a parameter that is related to fluctuations of the local overlaps, with distinction between bump and block phases. Simulation of neural dynamics shows a competition between localized (bump), structured (block) and global retrieval. When the network topology randomness increases, the phase-diagram shows a transition from local to global retrieval. Furthermore, the local phase splits into a bump phase for low activity and a block phase for high activity. A theoretical approach solves the asymptotic limit of the model, and confirms the simulation results which predicts the change of stability from bumps to blocks when the storage ratio increases.
机译:稀疏代码网络的检索能力在很大程度上取决于神经元的触发阈值。如果连接在空间上是均匀的,则网络的宏观属性可以通过神经元和学习模式之间的重叠以及整体活动来衡量。但是,对于非均匀网络(例如小世界网络),神经元可以检索模式片段而无需执行全局检索。需要局部重叠来描述网络。我们使用与局部重叠波动相关的参数来表征神经状态的结构类型,并区分凸块相位和块相位。神经动力学的仿真显示了局部检索(凹凸),结构化检索(块)和全局检索之间的竞争。当网络拓扑随机性增加时,相位图显示从本地检索到全局检索的过渡。此外,局部相分裂成用于低活性的凸起相和用于高活性的块相。一种理论方法解决了模型的渐近极限,并证实了仿真结果,该仿真结果预测了当存储比率增加时,从颠簸到块的稳定性的变化。

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