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The Binary Output Units of Neural Network

机译:神经网络的二进制输出单元

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When solving a multi-classification problem with k kinds of samples, if we use a multiple linear perceptron, k output nodes will be widely-used. In this paper, we introduce binary output units of multiple linear perceptron by analyzing the classification problems of vertices of the regular hexahedron in the Three-dimensional Euclidean Space. And we define Binary Approach and One-for-Each Approach to the problem. Then we obtain a theorem with the help of which we can find a Binary Approach that requires more less classification planes than the One-for-Each Approach when solving a One-for-Each Separable Classification Problem. When we apply the Binary Approach to the design of output units of multiple linear perceptron, the output units required will decrease greatly and more problems could be solved.
机译:当用k种样本解决多分类问题时,如果我们使用多个线性感知器,则k个输出节点将被广泛使用。本文通过分析三维欧氏空间中正六面体的顶点分类问题,介绍了多个线性感知器的二进制输出单元。并且我们针对该问题定义了二进制方法和一对多方法。然后,我们获得了一个定理,在求解一个可分离的分类问题时,我们可以找到一个比每个方法需要更少分类平面的二元方法。当我们将二进制方法应用于多个线性感知器的输出单元的设计时,所需的输出单元将大大减少,并且可以解决更多的问题。

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