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Separation of superimposed pattern and many-to-many associations by chaotic neural networks

机译:混沌神经网络分离叠加的模式和多对多关联

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We propose a chaotic associative memory (CAM). It has two distinctive features: 1) it can recall correct stored patterns from superimposed input; and 2) it can deal with many-to-many associations. As for the first feature, when a stored pattern is given to the conventional chaotic neural network as an external input, the input pattern is continuously searched. The proposed model makes use of the above property to separate the superimposed patterns. As for the second feature, most of the conventional associative memories cannot deal with many-to-many associations due to the superimposed pattern caused by the stored common data. However, since the proposed model can separate the superimposed pattern, it can deal with many-to-many associations. A series of computer simulations shows the effectiveness of the proposed model.
机译:我们提出了混沌关联记忆(CAM)。它有两个独特的特点:1)它可以记住从叠加输入的正确存储模式; 2)它可以处理多对多的关联。至于第一特征,当将存储的模式作为外部输入给予传统的混沌神经网络时,连续搜索输入模式。所提出的模型利用上述属性来分离叠加的图案。至于第二特征,由于由所存储的公共数据引起的叠加模式,大多数传统关联存储器不能处理多对多关联。然而,由于所提出的模型可以分开叠加模式,因此它可以处理多对多的关联。一系列计算机模拟显示了所提出的模型的有效性。

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