中文

Associative Memory by Recurrent Neural Networks with Delay Elements

无序系统与神经网络 2007-05-23 v2 q-bio

摘要

The synapses of real neural systems seem to have delays. Therefore, it is worthwhile to analyze associative memory models with delayed synapses. Thus, a sequential associative memory model with delayed synapses is discussed, where a discrete synchronous updating rule and a correlation learning rule are employed. Its dynamic properties are analyzed by the statistical neurodynamics. In this paper, we first re-derive the Yanai-Kim theory, which involves macrodynamical equations for the dynamics of the network with serial delay elements. Since their theory needs a computational complexity of O(L4t)O(L^4t) to obtain the macroscopic state at time step t where L is the length of delay, it is intractable to discuss the macroscopic properties for a large L limit. Thus, we derive steady state equations using the discrete Fourier transformation, where the computational complexity does not formally depend on L. We show that the storage capacity αC\alpha_C is in proportion to the delay length L with a large L limit, and the proportion constant is 0.195, i.e., αC=0.195L\alpha_C = 0.195 L. These results are supported by computer simulations.

关键词

引用

@article{arxiv.cond-mat/0209258,
  title  = {Associative Memory by Recurrent Neural Networks with Delay Elements},
  author = {Seiji Miyoshi and Hiro-Fumi Yanai and Masato Okada},
  journal= {arXiv preprint arXiv:cond-mat/0209258},
  year   = {2007}
}

备注

17 pages, 10figures