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Support Vector Machines with Neural Network

机译:支持矢量机与神经网络

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摘要

Deep learning is paid attention to by many researchers but it is not understandable because of its complex architecture and a black box of data processing. However, deep learning can construct appropriate features from raw data. On the other hand, statistical machine learning is understandable theoretically but needs features capturing characteristics of input data. If deep learning and statistical machine learning are combined, some efforts to construct machine learning decreases. In the paper a goal is to combine deep learning with statistical machine learning, support vector machines and to reduce manual setting efforts. To realize it a neural network constructs a kernel function and linear support vector machines constructs a discriminative hyperplane. In some classification tasks of UCI Machine Learning Repository the proposed method was evaluated. We confirmed the proposed method achieved the same performance as support vector machines without much adjustment.
机译:深入学习被许多研究人员注重注意,但由于其复杂的架构和一盒数据处理,因此无法理解。但是,深度学习可以从原始数据构建适当的功能。另一方面,理论上,统计机器学习是可以理解的,但需要捕获输入数据的特性。如果合并深度学习和统计机器学习,建设机器学习的一些努力减少。在本文中,目标是将深度学习与统计机器学习,支持向量机和减少手动设置努力。为了实现它,神经网络构造内核功能和线性支持向量机构建鉴别的超平面。在UCI机器学习存储库的一些分类任务中,评估了所提出的方法。我们确认了所提出的方法在没有多大调整的情况下实现了与支持向量机相同的性能。

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