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A Non-linearly Virtual Sample Generation Technique Using Group Discovery And Parametric Equations Of Hypersphere

机译:利用群发现和超球面参数方程组的非线性虚拟样本生成技术

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In manufacturing systems, only a small training datasct can be obtained in the early stages. A small training dataset usually leads to low learning accuracy with regard to classification of machine learning, and the knowledge derived is often fragile, and this is called the small sample problem. This research mainly aims at overcoming this problem using a special nonlinear classification technique to gen-crate virtual samples to enlarge the training dataset for learning improvement. This research proposes a new sample generation method, named non-linear virtual sample generation (NVSG), which combines a unique group discovery technique and a virtual sample generation method using parametric equations of hypersphere. By applying a back-propagation neural network (BPN) as the learning tool, the computational experiments obtained from the simulated dataset and the real dataset quoted from the Iris Plant Database show that the learning accuracy can be significantly improved using NVSG method for very small training datasets.
机译:在制造系统中,早期只能获得很小的培训数据。较小的训练数据集通常会导致机器学习分类的学习准确性降低,并且所获得的知识通常很脆弱,这称为小样本问题。这项研究的主要目的是使用一种特殊的非线性分类技术来克服这个问题,生成虚拟样本,以扩大训练数据集以改善学习效果。这项研究提出了一种新的样本生成方法,称为非线性虚拟样本生成(NVSG),该方法结合了独特的组发现技术和使用超球面参数方程的虚拟样本生成方法。通过使用反向传播神经网络(BPN)作为学习工具,从模拟数据集和虹膜植物数据库引用的真实数据集获得的计算实验表明,使用NVSG方法进行很小的训练就可以显着提高学习准确性。数据集。

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