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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Learning linear PCA with convex semi-definite programming
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Learning linear PCA with convex semi-definite programming

机译:用凸半定规划学习线性PCA

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摘要

The aim of this paper is to learn a linear principal component using the nature of support vector machines (SVMs). To this end, a complete SVM-like framework of linear PCA (SVPCA) for deciding the projection direction is constructed, where new expected risk and margin are introduced. Within this framework, a new semi-definite programming problem for maximizing the margin is formulated and a new definition of support vectors is established. As a weighted case of regular PCA, our SVPCA coincides with the regular PCA if all the samples play the same part in data compression. Theoretical explanation indicates that SVPCA is based on a margin-based generalization bound and thus good prediction ability is ensured. Furthermore, the robust form of SVPCA with a interpretable parameter is achieved using the soft idea in SVMs. The great advantage lies in the fact that SVPCA is a learning algorithm without local minima because of the convexity of the semi-definite optimization problems. To validate the performance of SVPCA, several experiments are conducted and numerical results have demonstrated that their generalization ability is better than that of regular PCA. Finally, some existing problems are also discussed. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文的目的是利用支持向量机(SVM)的性质学习线性主成分。为此,构建了用于确定投影方向的完整的类似SVM的线性PCA(SVPCA)框架,其中引入了新的预期风险和利润。在此框架内,提出了一个新的半定规划问题,以最大化余量,并建立了支持向量的新定义。作为常规PCA的加权情况,如果所有样本在数据压缩中起着相同的作用,则我们的SVPCA与常规PCA一致。理论解释表明,SVPCA基于基于裕度的泛化边界,因此可以确保良好的预测能力。此外,使用SVM中的软思想可以实现具有可解释参数的SVPCA的鲁棒形式。最大优势在于,由于半定优化问题的凸性,SVPCA是一种没有局部极小值的学习算法。为了验证SVPCA的性能,进行了一些实验,数值结果表明,它们的泛化能力比常规PCA更好。最后,还讨论了一些现有的问题。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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