在Parzen窗口分类器上

Jing Peng, G. Seetharaman
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引用次数: 0

摘要

Parzen Windows分类器已经应用于各种密度估计和分类任务,并取得了相当大的成功。已知Parzen窗口在渐近极限下收敛。然而,对于它们在有限样本下的性能,目前还缺乏理论分析。在本文中,我们展示了Parzen窗口和正则化最小二乘算法之间的联系,这在计算学习理论中有着良好的基础。这种联系使我们能够对Parzen Windows分类器及其在有限样本设置中的性能提供有用的见解。最后,我们使用大量真实数据集展示了Parzen Windows分类器性能的实证结果。
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On Parzen windows classifiers
Parzen Windows classifiers have been applied to a variety of density estimation as well as classification tasks with considerable success. Parzen Windows are known to converge in the asymptotic limit. However, there is a lack of theoretical analysis on their performance with finite samples. In this paper we show a connection between Parzen Windows and the regularized least squares algorithm, which has a well-established foundation in computational learning theory. This connection allows us to provide useful insight into Parzen Windows classifiers and their performance in finite sample settings. Finally, we show empirical results on the performance of Parzen Windows classifiers using a number of real data sets.
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