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Encoding strategy for maximum noise tolerance bidirectional associative memory

机译:最大噪声容限双向关联存储器的编码策略

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摘要

In this paper, the basic bidirectional associative memory (BAM) is extended by choosing weights in the correlation matrix, for a given set of training pairs, which result in a maximum noise tolerance set for BAM. We prove that for a given set of training pairs, the maximum noise tolerance set is the largest, in the sense that this optimized BAM will recall the correct training pair if any input pattern is within the maximum noise tolerance set and at least one pattern outside the maximum noise tolerance set by one Hamming distance will not converge to the correct training pair. This maximum tolerance set is the union of the maximum basins of attraction. A standard genetic algorithm (GA) is used to calculate the weights to maximize the objective function which generates a maximum tolerance set for BAM. Computer simulations are presented to illustrate the error correction and fault tolerance properties of the optimized BAM.
机译:在本文中,对于给定的一组训练对,通过在相关矩阵中选择权重来扩展基本双向联想记忆(BAM),从而获得针对BAM的最大噪声容限设置。我们证明,对于给定的一组训练对,最大噪声容忍度集是最大的,从某种意义上说,如果任何输入模式在最大噪声容忍度范围内并且至少有一个模式在外部,则此优化的BAM将调用正确的训练对。由一个汉明距离设定的最大噪声容限将不会收敛到正确的训练对。该最大容差集是最大吸引盆的并集。使用标准遗传算法(GA)计算权重以使目标函数最大化,从而生成BAM的最大容差集。提出了计算机仿真来说明优化的BAM的纠错和容错特性。

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