大容量记忆关联的神经混合系统

S.X. Souza, A. D. Doria Neto, J.A.F. Costa, M.L. de Andrade Netto
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引用次数: 1

摘要

提出了一种基于Kohonen和Hopfield网络的记忆关联神经混合系统。它使用启发式方法将一组模式分成不同的子集,目的是提高Hopfield网络(PAHN)并行架构的性能。这种体系结构避免了一些虚假状态,使模式存储容量比典型的Hopfield网络所允许的更大。该策略包括一种使用SOM算法对模式进行排序的方法,并以同一子集的模式之间尽可能正交的方式将它们分布到这些子集中。结果表明,与随机分布和穷举方法相比,该方法在子集中分布模式的效果较好。结果还表明,所提出的启发式方法产生的模式子集能够实现更稳健的记忆检索。
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A neural hybrid system for large memory association
A neural hybrid system based on Kohonen and Hopfield networks is proposed for memory association. It uses a heuristic approach to split a total set of patterns into various subsets with the aim to increase performance of the parallel architecture of Hopfield networks (PAHN). This architecture avoids several spurious states enabling a pattern storage capacity larger then permitted by a typical Hopfield network. The strategy consists of a method to sort patterns with the SOM algorithm and distribute them into these subsets in such a way that the patterns of the same subset are to be as more orthogonal as possible among themselves. The results show that the strategy employed to distribute patterns in subsets works well when compared with the random distributions and with the exhaustive approach. The results also show that the proposed heuristic lead to patterns subsets that enable more robust memory retrieval.
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