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QUADRO: A SUPERVISED DIMENSION REDUCTION METHOD VIA RAYLEIGH QUOTIENT OPTIMIZATION

机译:QUADRO:通过瑞利商数优化的尺寸缩减方法

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摘要

We propose a novel Rayleigh quotient based sparse quadratic dimension reduction method—named QUADRO (Quadratic Dimension Reduction via Rayleigh Optimization)—for analyzing high-dimensional data. Unlike in the linear setting where Rayleigh quotient optimization coincides with classification, these two problems are very different under nonlinear settings. In this paper, we clarify this difference and show that Rayleigh quotient optimization may be of independent scientific interests. One major challenge of Rayleigh quotient optimization is that the variance of quadratic statistics involves all fourth cross-moments of predictors, which are infeasible to compute for high-dimensional applications and may accumulate too many stochastic errors. This issue is resolved by considering a family of elliptical models. Moreover, for heavy-tail distributions, robust estimates of mean vectors and covariance matrices are employed to guarantee uniform convergence in estimating non-polynomially many parameters, even though only the fourth moments are assumed. Methodologically, QUADRO is based on elliptical models which allow us to formulate the Rayleigh quotient maximization as a convex optimization problem. Computationally, we propose an efficient linearized augmented Lagrangian method to solve the constrained optimization problem. Theoretically, we provide explicit rates of convergence in terms of Rayleigh quotient under both Gaussian and general elliptical models. Thorough numerical results on both synthetic and real datasets are also provided to back up our theoretical results.
机译:我们提出了一种新的基于瑞利商的稀疏二次降维方法,称为QUADRO(通过瑞利优化进行二次降维),用于分析高维数据。与在瑞利商优化与分类同时进行的线性设置中不同,这两个问题在非线性设置下非常不同。在本文中,我们澄清了这一差异,并表明瑞利商优化可能具有独立的科学利益。瑞利商优化的一个主要挑战是,二次统计量的方差涉及预测变量的所有第四个交叉矩,对于高维应用而言,这是不可行的,并且可能会累积太多的随机误差。通过考虑一系列椭圆模型可以解决此问题。此外,对于重尾分布,即使仅假设第四阶矩,在估计非多项式的许多参数时,均值向量和协方差矩阵的鲁棒估计也可用来保证均匀收敛。在方法论上,QUADRO基于椭圆模型,该模型允许我们将瑞利商最大化表示为凸优化问题。在计算上,我们提出了一种有效的线性化增强拉格朗日方法来解决约束优化问题。从理论上讲,我们在高斯模型和普通椭圆模型下都以瑞利商为单位提供了明确的收敛速度。还提供了有关综合数据集和实际数据集的详尽数值结果,以支持我们的理论结果。

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