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The Generalized Product Neuron Model in Complex Domain

机译:复杂域中的广义乘积神经元模型

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This paper proposes a complex valued generalized product neuron (GPN) which tries to incorporate polynomial structure in the aggregation of inputs. The advantage of using this model is to bring in the non-linearity in aggregation function by taking a product of linear terms in each dimension of the input space. This aggregation function has the ability to capture higher-order correlations in the input data. Such neurons are capable of learning any problem irrespective of whether the multi dimensional data is linearly separable or not which resembles higher order neurons. But these neurons do not have combinatorial increase of the number of weights in the dimensions of inputs as higher order neurons. The learning and generalization capabilities of proposed neuron are demonstrated through variety of problems. It has been shown that some benchmark problems can be solved with single GPN only without hidden layer.
机译:本文提出了一种复数值广义乘积神经元(GPN),它试图将多项式结构纳入输入的聚合中。使用此模型的优点是通过在输入空间的每个维度上取线性项的乘积来引入聚合函数中的非线性。该聚合功能具有捕获输入数据中高阶相关性的能力。这样的神经元能够学习任何问题,而与多维数据是否类似于线性高阶神经元无关。但是这些神经元没有像高阶神经元那样在输入维度上权重数量的组合增加。通过各种问题证明了所提出的神经元的学习和泛化能力。已经表明,只有没有隐藏层的情况下,只有单个GPN才能解决一些基准测试问题。

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