Localized support vector machines using Parzen window for incomplete sets of categories

Kevin L. Veon, M. Mahoor
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引用次数: 2

Abstract

This paper describes a novel approach to pattern classification that combines Parzen window and support vector machines. Pattern classification is usually performed in universes where all possible categories are defined. Most of the current supervised learning classification techniques do not account for undefined categories. In a universe that is only partially defined, there may be objects that do not fall into the known set of categories. It would be a mistake to always classify these objects as a known category. We propose a Parzen window-based approach which is capable of classifying an object as not belonging to a known class. In our approach we use a Parzen window to identify local neighbors of a test point and train a localized support vector machine on the identified neighbors. Visual category recognition experiments are performed to compare the results of our approach, localized support vector machines using a k-nearest neighbors approach, and global support vector machines. Our experiments show that our Parzen window approach has superior results when testing with incomplete sets, and comparable results when testing with complete sets.
局部支持向量机使用Parzen窗口的不完全类别集
本文提出了一种结合Parzen窗口和支持向量机的模式分类方法。模式分类通常在定义了所有可能类别的宇宙中进行。目前大多数监督学习分类技术都没有考虑到未定义的类别。在一个只有部分定义的宇宙中,可能存在不属于已知类别集合的物体。总是把这些物体归为已知的一类是错误的。我们提出了一种基于Parzen窗口的方法,该方法能够将对象分类为不属于已知类。在我们的方法中,我们使用Parzen窗口来识别测试点的局部邻居,并在识别的邻居上训练局部支持向量机。进行了视觉类别识别实验,以比较我们的方法、使用k近邻方法的局部支持向量机和全局支持向量机的结果。我们的实验表明,我们的Parzen窗口方法在不完备集测试时具有优越的结果,在完备集测试时具有相当的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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