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Visualizing Support Vectors and topological data mapping for improved generalization capabilities

机译:可视化支持向量和拓扑数据映射以提高泛化能力

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This paper presents a method to improve generalization capabilities of supervised neural networks based on topological data mapping used in Counter Propagation Networks (CPNs). Using topological data mapping on CPNs the method presented herein provides advantages to interpolate new data in sparse areas that exist among categories and to remove overlapping or conflicting data in original training data. Moreover, our method can control the number of training data by changing the size of the category map according to a problem to be solved. As a type of supervised neural networks combined with our method, we select Support Vector Machines (SVMs), which are attractive as learning algorithms having high generalization capabilities to be mapped to a high-dimensional space using kernel functions. We applied our method to classification problems of two-dimensional datasets for evaluation of basic characteristics of our method. Topological data mapping based compression of original training data induces resolution of conflict among data and reducing the number of Support Vectors (SVs) that are absorbed as soft margins. The classification results show that decision boundaries are changed and that generalization capabilities are improved using our method. Moreover, we applied our method to face recognition under various illumination conditions using the Yale Face Database B. The results indicate that our method provides not only improved generalization capabilities, but also visualizes spatial distributions of SVs on a category map.
机译:本文提出了一种基于对向传播网络(CPN)中使用的拓扑数据映射来提高监督神经网络泛化能力的方法。使用在CPN上的拓扑数据映射,本文介绍的方法具有在类别之间存在的稀疏区域中插值新数据并删除原始训练数据中重叠或冲突的数据的优点。此外,我们的方法可以根据要解决的问题通过更改类别图的大小来控制训练数据的数量。作为与我们的方法相结合的一种监督神经网络,我们选择了支持向量机(SVM),它很有吸引力,因为它是一种具有高泛化能力的学习算法,可以使用内核函数映射到高维空间。我们将我们的方法应用于二维数据集的分类问题,以评估该方法的基本特征。基于拓扑数据映射的原始训练数据压缩可解决数据之间的冲突,并减少被吸收为软边距的支持向量(SV)的数量。分类结果表明,使用我们的方法可以改变决策边界并提高泛化能力。此外,我们使用耶鲁人脸数据库B将我们的方法应用于各种光照条件下的人脸识别。结果表明,我们的方法不仅提供了改进的泛化能力,而且还可以在类别地图上可视化SV的空间分布。

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