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Bounds on the degree of high order binary perceptrons

机译:高阶二元感知器度的界

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High order perceptrons are often used in order to reduce the size of neural networks. The complexity of the architecture of a usual multilayer network is then turned into the complexity of the functions performed by each high order unit and in particular by the degree of their polynomials. The main result of this paper provides a bound on the degree of the polynomial of high order perceptron, when the binary training data result from the encoding of an arrangemtn of hyperplanes in the Euclidian space. Such a situation occurs naturally in the case of a feedforward network with a single hidden layer of first order perceptrons and an output layer of high order perceptrons. In this case, the result says that the degree of the high order perceptrons can be bounded by the minimum of the number of inputs and the number of hidden units.
机译:为了减小神经网络的大小,经常使用高阶感知器。然后,通常的多层网络的体系结构的复杂性就变成了每个高阶单元执行的功能的复杂性,尤其是它们的多项式的阶数。当二进制训练数据来自欧几里得空间中超平面的排列编码时,本文的主要结果为高阶感知器的多项式的阶数提供了一个界限。在前馈网络具有一阶感知器的单个隐藏层和高阶感知器的输出层的情况下,自然会发生这种情况。在这种情况下,结果表明,高阶感知器的程度可以受输入数量和隐藏单元数量中最小值的限制。

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