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Implementing automatic learning according to the K nearest neighbor mode in artificial neural networks

机译:在人工神经网络中根据K最近邻模式实现自动学习

摘要

A method of achieving automatic learning of an input vector presented to an artificial neural network (ANN) formed by a plurality of neurons, using the K nearest neighbor (KNN) mode. Upon providing an input vector to be learned to the ANN, a Write component operation is performed to store the input vector components in the first available free neuron of the ANN. Then, a Write category operation is performed by assigning a category defined by the user to the input vector. Next, a test is performed to determine whether this category matches the categories of the nearest prototypes, i.e. which are located at the minimum distance. If it matches, this first free neuron is not engaged. Otherwise, it is engaged by assigning the matching category to it. As a result, the input vector becomes the new prototype with the matching category associated thereto. Further described is a circuit which automatically retains the first free neuron of the ANN for learning.
机译:一种使用K最近邻(KNN)模式自动学习呈现给由多个神经元形成的人工神经网络(ANN)的输入向量的方法。在将要学习的输入向量提供给ANN后,执行写分量操作以将输入向量分量存储在ANN的第一个可用自由神经元中。然后,通过将用户定义的类别分配给输入向量来执行写入类别操作。接下来,执行测试以确定该类别是否与最接近的原型的类别匹配,即位于最小距离的类别。如果匹配,则第一个自由神经元不参与。否则,通过为其分配匹配类别来参与。结果,输入向量成为具有与其关联的匹配类别的新原型。进一步描述了自动保留ANN的第一自由神经元用于学习的电路。

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