Analysis of Bidirectional Associative Memory Using SCSNA and Statistical Neurodynamics

Hayaru Shouno, M. Okada
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引用次数: 1

Abstract

Bidirectional associative memory (BAM) is a kind of an artificial neural network used to memorize and retrieve heterogeneous pattern pairs. Many efforts have been made to improve BAM from the the viewpoint of computer application, and few theoretical studies have been done. We investigated the theoretical characteristics of BAM using a framework of statistical–mechanical analysis. To investigate the equilibrium state of BAM, we applied self-consistent signal to noise analysis (SCSNA) and obtained a macroscopic parameter equations and relative capacity. Moreover, to investigate not only the equilibrium state but also the retrieval process of reaching the equilibrium state, we applied statistical neurodynamics to the update rule of BAM and obtained evolution equations for the macroscopic parameters. These evolution equations are consistent with the results of SCSNA in the equilibrium state.
基于SCSNA和统计神经动力学的双向联想记忆分析
双向联想记忆(BAM)是一种用于记忆和检索异构模式对的人工神经网络。从计算机应用的角度对BAM进行了改进,但理论研究较少。我们使用统计力学分析的框架来研究BAM的理论特征。为了研究BAM的平衡状态,我们采用自洽信号噪声分析(SCSNA)方法,得到了BAM的宏观参数方程和相对容量。此外,为了研究平衡状态和达到平衡状态的恢复过程,我们将统计神经动力学应用于BAM的更新规则,得到了宏观参数的演化方程。这些演化方程与平衡态SCSNA的结果一致。
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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