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Bagging of Duo Output Neural Networks for Single Output Regression Problem

机译:用于单输出回归问题的Duo输出神经网络的装袋

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This paper presents an approach to the single output regression problem using ensemble of duo output neural networks based on bagging technique. Each component in the ensemble consists of a pair of duo output neural networks. The first neural network is trained to provide duo outputs which are a pair of truth and falsity values whereas the second neural network provides a pair of falsity and truth values. The target outputs used to train the second network are organized in reverse order of the first network. For the former neural network, the truth and nonfalsity outputs are used to created the average truth output. For the later neural network, the falsity and non-truth outputs are used to provide the average falsity output In order to combine outputs from components in the ensemble, the simple averaging and the dynamic weighted averaging techniques are used. The weight is created based on the difference between the truth and non-falsity values. The proposed approach has been tested with three benchmarking UCI data sets, which are housing, concrete compressive strength, and computer hardware. The proposed ensemble methods improves the performance as compared to the traditional ensemble of neural networks, the ensemble of complementary neural networks, and the ensemble of support vector machine with linear, polynomial, and radial basis function kernels.
机译:本文提出了一种基于袋装技术的双输出神经网络集成的单输出回归问题的方法。集成中的每个组件都由一对双输出神经网络组成。训练第一神经网络以提供二对输出,该输出是一对真伪值,而第二神经网络提供一对虚假和真值。用于训练第二网络的目标输出以与第一网络相反的顺序组织。对于以前的神经网络,使用真值和非虚假输出来创建平均真值输出。对于后面的神经网络,虚假和非真实输出用于提供平均虚假输出。为了合并集合中组件的输出,使用了简单平均和动态加权平均技术。权重是根据真实值和非虚假值之间的差异创建的。所提出的方法已通过三个基准UCI数据集进行了测试,这三个数据集分别是房屋,混凝土抗压强度和计算机硬件。与传统的神经网络集成,互补神经网络集成以及带有线性,多项式和径向基函数核的支持向量机集成相比,所提出的集成方法提高了性能。

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