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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A NOVEL NEURAL HETERO-ASSOCIATIVE MEMORY MODEL FOR PATTERN RECOGNITION
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A NOVEL NEURAL HETERO-ASSOCIATIVE MEMORY MODEL FOR PATTERN RECOGNITION

机译:一种新的模式异质联想记忆模型

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摘要

A novel hetero-associative neural network model is proposed where the associative recall of pattern is achieved in a single pass through the system. Instead of forming the memory matrix by an outer product formulation, inner product cross-correlation of input data with each set of the library vector was performed. The limitation regarding the constraint imposed on the choice or selection of patterns that can be stored is avoided by such a formulation. The reliability of the proposed model is much improved in comparison to the heteroassociative memory models which uses outer product correlation formulation to construct the memory matrix. [References: 23]
机译:提出了一种新颖的异质联想神经网络模型,其中通过系统一次通过即可实现模式的联想召回。代替通过外部乘积公式形成存储矩阵,而是执行输入数据与每组库向量的内部乘积互相关。通过这样的表述避免了关于对可存储的图案的选择或选择施加的约束的限制。与使用外部乘积相关公式构造存储矩阵的异质联想存储模型相比,该模型的可靠性得到了极大的提高。 [参考:23]

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