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A Rank-One Update Algorithm for Fast Solving Kernel Foley–Sammon Optimal Discriminant Vectors

机译:快速求解核Foley-Sammon最优判别向量的秩更新算法

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摘要

Discriminant analysis plays an important role in statistical pattern recognition. A popular method is the Foley–Sammon optimal discriminant vectors (FSODVs) method, which aims to find an optimal set of discriminant vectors that maximize the Fisher discriminant criterion under the orthogonal constraint. The FSODVs method outperforms the classic Fisher linear discriminant analysis (FLDA) method in the sense that it can solve more discriminant vectors for recognition. Kernel Foley–Sammon optimal discriminant vectors (KFSODVs) is a nonlinear extension of FSODVs via the kernel trick. However, the current KFSODVs algorithm may suffer from the heavy computation problem since it involves computing the inverse of matrices when solving each discriminant vector, resulting in a cubic complexity for each discriminant vector. This is costly when the number of discriminant vectors to be computed is large. In this paper, we propose a fast algorithm for solving the KFSODVs, which is based on rank-one update (ROU) of the eigensytems. It only requires a square complexity for each discriminant vector. Moreover, we also generalize our method to efficiently solve a family of optimally constrained generalized Rayleigh quotient (OCGRQ) problems which include many existing dimensionality reduction techniques. We conduct extensive experiments on several real data sets to demonstrate the effectiveness of the proposed algorithms.
机译:判别分析在统计模式识别中起着重要作用。一种流行的方法是Foley-Sammon最佳判别向量(FSODV)方法,该方法旨在找到在正交约束下最大化Fisher判别准则的最佳判别向量集。 FSODVs方法优于经典的Fisher线性判别分析(FLDA)方法,因为它可以解决更多的判别向量以进行识别。内核Foley-Sammon最佳判别向量(KFSODV)是通过内核技巧对FSODV的非线性扩展。但是,当前的KFSODVs算法可能会遇到繁重的计算问题,因为它涉及在求解每个判别向量时计算矩阵的逆,从而导致每个判别向量都具有立方复杂性。当要计算的判别向量的数量很大时,这是昂贵的。在本文中,我们提出了一种基于特征系统的秩更新(ROU)的快速算法来求解KFSODV。对于每个判别向量,只需要平方复杂度即可。此外,我们还推广了我们的方法,以有效解决一系列最优约束的广义瑞利商(OCGRQ)问题,其中包括许多现有的降维技术。我们对几个真实数据集进行了广泛的实验,以证明所提出算法的有效性。

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