首页> 外文会议> >Exponential Bidirectional Associative Memory Based on Small-world Architecture
【24h】

Exponential Bidirectional Associative Memory Based on Small-world Architecture

机译:基于小世界体系结构的指数双向联想记忆

获取原文

摘要

Most of neural associative memory models have fully-connected structure. However, from both the neurobiological viewpoint and the hardware implementation perspective, it seems more reasonable to consider such networks with both predominantly local connectivity and sparsely global connectivity. Small-World Architecture (SWA) provides an interesting approach to implementing this design. Recently, Bohland et al. have introduced SWA into Hopfield network and verified the effectiveness of such structure. However, such an attention has not yet been paid to another important type of associative memories, i.e. Bidirectional Associative Memory (BAM). At the first glance, the introduction of SWA to BAM seems straightforward and easy. However, in fact, the randomly-rewiring procedure done for Hopfield network, cannot be directly applied to BAM or its variants because of their multi-layer structure and bidirectional associative mode. In this paper, we use an artful transformation to overcome the difficulty and propose a new exponential BAM model based on SWA, called SWeBAM. It is a brand-new extension to Hopfield network based on SWA in both associative mode and storage capacity. The experimental results demonstrate that with comparatively much fewer inter-neural connections, SWeBAM can obtain almost equivalent performances to the original exponential BAM (eBAM) in both storage capacity and error-correction capability. Moreover, owing to the introduction of SWA, SWeBAM can be realized more easily in hardware than eBAM.
机译:大多数神经联想记忆模型具有完全连接的结构。但是,从神经生物学的角度和硬件实现的角度来看,考虑主要具有本地连接性和稀疏全局连接性的此类网络似乎更为合理。小型世界体系结构(SWA)提供了一种有趣的方法来实现此设计。最近,Bohland等。已经将SWA引入Hopfield网络并验证了这种结构的有效性。但是,尚未对另一种重要类型的关联存储器,即双向关联存储器(BAM)给予关注。乍一看,将SWA引入BAM似乎很简单。但是,实际上,由于Hopfield网络的多层结构和双向关联模式,因此对于Hopfield网络所做的随机重新合并过程无法直接应用于BAM或其变体。在本文中,我们通过巧妙的转换克服了这一难题,并提出了一种基于SWA的新指数BAM模型,称为SWeBAM。它是基于SWA的关联模式和存储容量的Hopfield网络的全新扩展。实验结果表明,通过较少的神经间连接,SWeBAM可以在存储容量和纠错能力上获得与原始指数BAM(eBAM)几乎相同的性能。此外,由于引入了SWA,与eBAM相比,在硬件上更容易实现SWeBAM。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号