New results of Quick Learning for Bidirectional Associative Memory having high capacity

M. Hattori, M. Hagiwara, M. Nakagawa
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引用次数: 7

Abstract

Several important characteristics of Quick Learning for Bidirectional Associative Memory (QLBAM) are introduced. QLBAM uses two stage learning. In the first stage, the BAM is trained by Hebbian learning and then by Pseudo-Relaxation Learning Algorithm for BAM (PRLAB). The following features of the QLBAM are made clear: it is insensitive to correlation of training pairs; it is robust for noisy inputs; the minimum absolute value of net inputs indexes a noise margin; the memory capacity is greatly improved: the maximum capacity in our simulation is about 2.2N.<>
高容量双向联想记忆快速学习的新结果
介绍了双向联想记忆快速学习的几个重要特点。QLBAM使用两阶段学习。首先采用Hebbian学习对BAM进行训练,然后采用伪松弛学习算法对BAM进行训练。明确了QLBAM的以下特点:对训练对的相关性不敏感;它对噪声输入具有鲁棒性;净输入的最小绝对值表示噪声裕度;大大提高了内存容量:在我们的模拟中最大容量约为2.2N.>
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