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Designing partially-connected, multilayer perceptron neural nets through information gain

机译:通过信息增益设计部分连接的多层感知器神经网络

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An adequate number of hidden neurons and connection structure of a multi-layer perceptron network (MLP) are usually determined by experimentation. In this paper, we propose a scheme to define an appropriate structure and number of neurons of a partially connected MLP when used for classification. Rules for designing the network are based on a decision tree previously built using information gain. Our structure, called IG Net, is inspired by the Entropy Net [1], but contains fewer layers and connections than such network or than a fully-connected neural network and holds equivalent classification power. We tested the classification performance of our network using 10 databases from the UCI Machine Learning Repository. The performance obtained by IG Net using such databases showed to be statistically equivalent to the one obtained by an Entropy Net or by a fully-connected MLP, using fewer computational resources than the compared models.
机译:通常通过实验确定足够数量的隐藏神经元和多层感知器网络(MLP)的连接结构。在本文中,我们提出了一种方案,用于定义用于分类的部分连接的MLP的适当结构和神经元数量。用于设计网络的规则基于先前使用信息增益构建的决策树。我们的结构称为IG Net,它受到Entropy Net [1]的启发,但包含的层和连接数少于此类网络或完全连接的神经网络,并且具有同等的分类能力。我们使用UCI机器学习存储库中的10个数据库测试了网络的分类性能。 IG Net使用此类数据库获得的性能在统计上证明与Entropy Net或完全连接的MLP获得的性能相同,所使用的计算资源少于所比较的模型。

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