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A study on merging mechanisms of simple hopfield network models for building associative memory

机译:简单Hopfield网络模型融合机制的研究与建立关联记忆

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We are in the era of artificial intelligence which is fulfilling the vision of ubiquitous intelligent machines and systems. Just like in us humans, the most critical elements for machine intelligence are those related to associative memory and recall. It is urgent to have a structure or model that can emulate humanlike associative memory and recall functionality. This research is aimed at building a model based on a hybrid of neural networks like Hopfield network, recursive neural network (Recursive NN), and recurrent neural network (Recurrent NN). In our study, a Hopfield network is used as a core element for learning associative relations among concepts or objects and the Hopfield matrix as a basic unit memory for association knowledge. Hopfield networks in a sequence are recursively merged by applying a Recursive NN and associative relations between concepts/objects nodes in two Hopfield networks are learned and their sequences of merging are kept in a Recurrent NN. When there is a stimulus, the model can retrieve its associative concepts or objects as its recall. This paper shows the feasibility of the proposed model with some case study and a proof of concept prototype.
机译:我们处于人工智能时代,符合普遍智能机器和系统的愿景。就像在美国人类一样,机器智能最关键的元素是与关联记忆和召回有关的元素。有一种结构或模型,可以模拟人类的关联内存并召回功能。该研究旨在基于Hopfield网络,递归神经网络(递归NN)和复发性神经网络(复发NN)等神经网络混合的模型。在我们的研究中,Hopfield网络被用作学习概念或物体之间的关联关系以及Hopfield矩阵之间的核心要素,作为关联知识的基本单元存储器。序列中的Hopfield网络通过应用递归NN和两个Hovfield网络中的概念/对象节点之间的关联关系来递归合并,并且它们的合并序列被保存在反复间NN中。当存在刺激时,该模型可以将其关联概念或物体检索为其召回。本文显示了拟议模型的可行性与某种程序研究和概念原型的证明。

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