Regularity and randomness in modular network structures for neural associative memories

G. Tanaka, T. Yamane, D. Nakano, R. Nakane, Y. Katayama
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引用次数: 4

Abstract

This study explores efficient structures of artificial neural networks for associative memories. Motivated by the real brain structure and the demand of energy efficiency in hardware implementation, we consider neural networks with sparse modular structures. Numerical experiments are performed to clarify how the storage capacity of associative memory depends on regularity and randomness of the network structures. We first show that a fully regularized network, suited for design of hardware, has poor recall performance and a fully random network, undesired for hardware implementation, yields excellent recall performance. For seeking a network structure with good performance and high implementability, we consider four different modular networks constructed based on different combinations of regularity and randomness. From the results of associative memory tests for these networks, we find that the combination of random intramodule connections and regular intermodule connections works better than the other cases. Our results suggest that the parallel usage of regularity and randomness in network structures could be beneficial for developing energy-efficient neural networks.
神经联想记忆模块网络结构的规律性和随机性
本研究探讨了人工神经网络在联想记忆中的有效结构。考虑到真实的大脑结构和硬件实现中对能量效率的需求,我们考虑了稀疏模块化结构的神经网络。通过数值实验阐明了网络结构的规律性和随机性对联想记忆存储容量的影响。我们首先表明,适合硬件设计的完全正则化网络具有较差的召回性能,而完全随机网络(不适合硬件实现)具有出色的召回性能。为了寻求一种具有良好性能和高可实现性的网络结构,我们考虑了基于规则性和随机性的不同组合构建的四种不同的模块化网络。从这些网络的联想记忆测试结果中,我们发现随机模块内连接和规则模块间连接的组合比其他情况效果更好。我们的研究结果表明,在网络结构中并行使用规律性和随机性可能有利于开发节能的神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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