基于进化计算的扩展自关联记忆模型参数优化方法

K. Masuda
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引用次数: 0

摘要

提出了一种基于进化计算的约束优化方法,用于扩展自关联存储器的参数优化。为了评估传统的自联想记忆模型的容量,我们开发了一系列具有更多参数的扩展模型,以增加灵活性。同时,这些参数的优化也使这些模型的性能最大化变得更加困难。另外,我们开发了一种新的基于ec的约束优化方法,该方法通过使用先前研究中所谓的“可行性操作”来有效地处理所有约束。现在,我们尝试将其应用于自联想记忆的优化问题。
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An evolutionary computation based constrained optimization approach for parameter tuning of an extended autoassociative memory model
We propose an evolutionary computation (EC) based constrained optimization approach for parameter tuning of an extended autoassociative memory. Being motivated to evaluate the capacity of the conventional autoassociative memory model and to go beyond the bound, we developed a series of extended models which have more parameters to increase the degree of flexibility. Meanwhile, optimization of these parameters has also become more difficult to maximize the performance of such models. By the way, we developed a new EC-based constrained optimization method in which all the constraints can be handled effectively by using the so-called “feasibilization operations” in a previous study. Now, we attempt to apply it to the optimization problem of the autoassociative memory.
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