基于干扰神经网络模型的数据分类

N. Babbysh
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引用次数: 0

摘要

经典的人工神经网络模型有几个缺点。为了消除这些缺点,提出了一种全新的人工神经网络模型,称为干涉模型。这个模型是基于人类大脑的生物神经元结构。本文介绍了干涉模型的工作原理。研究结果表明,该干涉模型不存在经典神经网络的缺点。它既适合于运行分类任务,也适合于模式识别。
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Data classification using interferential neural network model
Classical models of artificial neural networks have several disadvantages. To eliminate these shortcomings, a fundamentally new model of an artificial neural network, called the interferential model, is proposed. This model is based on the structure of biological neurons of the human brain. This work describes principles of work of interferential model. The results of the work show that the interferential model does not contain the disadvantages of classical neural networks. It is well suited for running classification task, as well as for pattern recognition.
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