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Study on Neural Network Integration Method Based on Morphological Associative Memory Framework

机译:基于形态关联记忆框架的神经网络集成方法研究

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摘要

In traditional neural network integration, people adopt Boosting, Bagging and other methods to integrate traditional neural networks. The integration is complex, time-consuming and laborious, difficult to popularize and apply. This paper is not a continuation of this method, but another integration which is called by us morphological neural network integration (MNNI) or morphological associative memory integration (MAMI). These networks used in MAMI are a network family, with 10 family members, unified in the morphological associative memory framework. Various morphological associative memory networks can be directly used as individual networks to learn and work separately, and then synthesize to draw conclusions. The results of some experiments show that this method is not only feasible in theory, but also effective in practice. It can avoid the complexity of traditional integration method, make the integration structure simple and clear, easy to operate, save time, and therefore is a method of neural network integration with research and application value. The contribution of this paper lies in that: (1) it proposed the concept and method of MNNI and, (2) verified the effectiveness of MNNI through experiments and, (3) it has the characteristics of simplicity, saving time and labor and cost, with a good application prospect and, (4) thus promoting the development of morphological neural networks in theory and practice.
机译:在传统的神经网络集成中,人们采用升级,装袋等方法整合传统的神经网络。整合复杂,耗时且艰苦,难以推广和申请。本文不是这种方法的延续,而是由美国形态神经网络集成(MNNI)或形态学联想内存集成(MAMI)调用的另一集成。 MAMI中使用的这些网络是网络家庭,其中10名家庭成员,统一在形态关联内存框架中。各种形态关联内存网络可以直接用作单独的网络以单独学习和工作,然后合成以得出结论。一些实验的结果表明,这种方法在理论上不仅是可行的,而且在实践中也有效。它可以避免传统集成方法的复杂性,使集成结构简单明了,易于操作,节省时间,因此是一种与研究和应用价值的神经网络集成方法。本文的贡献在于:(1)它提出了MNNI的概念和方法,(2)通过实验验证了MNNI的有效性,(3)它具有简单性,节省时间和劳动力和成本的特点,具有良好的应用前景,(4)从而促进理论与实践的形态神经网络的发展。

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