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Divided Chaotic Associative Memory for Successive Learning

机译:连续学习的划分混沌联想记忆

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摘要

In this paper, we propose a Divided Chaotic Associative Memory for Successive Learning (DCAMSL). The proposed model is based on the Improved Chaotic Associative Memory for Successive Learning (ICAMSL) and the Divided Chaotic Associative Memory for Successive Learning using Internal Patterns (DCAMSL-IP) which were proposed in order to improve the storage capacity. In most of the conventional neural network models, the learning process and the recall process are divided, and therefore they need all information to learning in advance. However, in the real world, it is very difficult to get all information to learn in advance. So we need the model whose learning and recall processes are not divided. As such model, although some models have been proposed, their storage capacity is small. In the proposed DCAMSL, the learning process and the recall process are not divided and its storage capacity is larger than that of the conventional ICAMSL.
机译:在本文中,我们提出了用于连续学习的划分混沌联想记忆(DCAMSL)。该模型基于改进的连续学习混沌联想记忆(ICAMSL)和使用内部模式的连续学习划分混沌联想记忆(DCAMSL-IP),旨在提高存储容量。在大多数传统的神经网络模型中,学习过程和召回过程是分开的,因此它们需要所有信息来提前学习。但是,在现实世界中,很难预先获取所有信息。因此,我们需要其学习和回忆过程没有划分的模型。作为这样的模型,尽管已经提出了一些模型,但是它们的存储容量很小。在提出的DCAMSL中,学习过程和召回过程没有分开,并且其存储容量比常规ICAMSL的存储容量大。

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