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Evolutionary Pseudo-Relaxation Learning Algorithm for Bidirectional Associative Memory

机译:双向联想记忆的进化伪松弛学习算法

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摘要

This paper analyzes the sensitivity to noise in BAM (Bidirectional Associative Memory), and then proves the noise immunity of BAM relates not only to the minimum absolute value of net inputs (MAV) but also to the variance of weights associated with synapse connections. In fact, it is a positive monotonically increasing function of the quotient of MAV divided by the variance of weights. Besides, the performance of pseudo-relaxation method depends on learning parameters (λ and ξ), but the relation of them is not linear. So it is hard to find a best combination of λ and ξ which leads to the best BAM performance. And it is obvious that pseudo-relaxation is a kind of local optimization method, so it cannot guarantee to get the global optimal solution. In this paper, a novel learning algorithm EPRBAM (evolutionary psendo-relaxation learning algorithm for bidirectional association memory) employing genetic algorithm and pseudo-relaxation method is proposed to get feasible solution of BAM weight matrix. This algorithm uses the quotient as the fitness of each individual and employs pseudo-relaxation method to adjust individual solution when it does not satisfy constraining condition any more after genetic operation. Experimental results show this algorithm improves noise immunity of BAM greatly. At the same time, EPRBAM does not depend on learning parameters and can get global optimal solution.
机译:本文分析了双向关联记忆(BAM)对噪声的敏感性,然后证明了BAM的抗扰性不仅与净输入的最小绝对值(MAV)有关,而且与与突触连接有关的权重变化有关。实际上,它是MAV商除以权重方差的正单调递增函数。此外,伪松弛方法的性能取决于学习参数(λ和ξ),但它们之间的关系不是线性的。因此,很难找到导致最佳BAM性能的λ和ξ的最佳组合。显然,伪松弛是一种局部优化方法,因此不能保证获得全局最优解。提出了一种新的基于遗传算法和伪松弛方法的学习算法EPRBAM(双向关联记忆的进化姿态松弛学习算法),以求得BAM权重矩阵的可行解。该算法将商作为每个个体的适应度,当遗传运算后不再满足约束条件时,采用伪松弛法来调整个体解。实验结果表明,该算法大大提高了BAM的抗噪能力。同时,EPRBAM不依赖于学习参数,可以得到全局最优解。

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