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分层神经网络同时进行串行和并行处理。

Hierarchical neural networks perform both serial and parallel processing.

机构信息

Dipartimento di Fisica, Sapienza Università di Roma, P.le A. Moro 2, 00185, Roma, Italy.

Dipartimento di Matematica, Sapienza Università di Roma, P.le A. Moro 2, 00185, Roma, Italy.

出版信息

Neural Netw. 2015 Jun;66:22-35. doi: 10.1016/j.neunet.2015.02.010. Epub 2015 Mar 2.

DOI:10.1016/j.neunet.2015.02.010
PMID:25795510
Abstract

In this work we study a Hebbian neural network, where neurons are arranged according to a hierarchical architecture such that their couplings scale with their reciprocal distance. As a full statistical mechanics solution is not yet available, after a streamlined introduction to the state of the art via that route, the problem is consistently approached through signal-to-noise technique and extensive numerical simulations. Focusing on the low-storage regime, where the amount of stored patterns grows at most logarithmical with the system size, we prove that these non-mean-field Hopfield-like networks display a richer phase diagram than their classical counterparts. In particular, these networks are able to perform serial processing (i.e. retrieve one pattern at a time through a complete rearrangement of the whole ensemble of neurons) as well as parallel processing (i.e. retrieve several patterns simultaneously, delegating the management of different patterns to diverse communities that build network). The tune between the two regimes is given by the rate of the coupling decay and by the level of noise affecting the system. The price to pay for those remarkable capabilities lies in a network's capacity smaller than the mean field counterpart, thus yielding a new budget principle: the wider the multitasking capabilities, the lower the network load and vice versa. This may have important implications in our understanding of biological complexity.

摘要

在这项工作中,我们研究了一种赫布型神经网络,其中神经元根据分层结构排列,使得它们的耦合与它们的倒数距离成比例。由于全统计力学解还不可用,因此在通过该途径进行精简的最新技术介绍之后,该问题通过信噪比技术和广泛的数值模拟始终得到解决。我们专注于低存储状态,其中存储模式的数量最多以系统大小的对数增长,证明了这些非均值场类似 Hopfield 的网络显示出比它们的经典对应物更丰富的相图。具体来说,这些网络能够进行串行处理(即通过整个神经元集合的完全重新排列一次检索一个模式)以及并行处理(即同时检索多个模式,将不同模式的管理委托给构建网络的不同社区)。两种模式之间的调谐由耦合衰减的速率和影响系统的噪声水平决定。这些显著功能的代价是网络的容量小于均值场对应物,从而产生新的预算原则:多任务处理能力越宽,网络负载越低,反之亦然。这可能对我们理解生物复杂性具有重要意义。

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Hierarchical neural networks perform both serial and parallel processing.分层神经网络同时进行串行和并行处理。
Neural Netw. 2015 Jun;66:22-35. doi: 10.1016/j.neunet.2015.02.010. Epub 2015 Mar 2.
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Multitasking attractor networks with neuronal threshold noise.具有神经元阈值噪声的多重任务吸引子网络。
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Parallel retrieval of correlated patterns: from Hopfield networks to Boltzmann machines.并行关联模式检索:从霍普菲尔德网络到玻尔兹曼机。
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Network capacity analysis for latent attractor computation.用于潜在吸引子计算的网络容量分析。
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Reconstructing the Hopfield network as an inverse Ising problem.将霍普菲尔德网络重构为逆伊辛问题。
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Enhanced storage capacity with errors in scale-free Hopfield neural networks: An analytical study.具有无标度霍普菲尔德神经网络误差的增强存储容量:一项分析研究。
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