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A power-based adaptive method for eigenanalysis without square-root operations

机译:一种无需平方根运算的基于功率的自适应特征分析方法

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This paper describes an adaptive eigenanalysis algorithm for estimating the eigenstructure of a sample covariance matrix. A minimization nonquadratic criterion is formulated by exploring the relationship of eigenvalues between the covariance matrix and its inverse matrix. A quasi-Newton approach is proposed to perform the task of minimization. It is shown that the new algorithm can be acted as another power method but without square-root operation. This approach is well-suited to parallel implementation when it is used for iterative estimation of multiple principal components by a deflation method. A unified modular architecture is developed for the analysis of both principal and minor components. Simulation experiments are carried out with both stationary and nonstationary data. The results show that the proposed method is capable of extracting multiple principal components in parallel with fast convergence speed and high tracking accuracy. (c) 2006 Elsevier Inc. All rights reserved.
机译:本文介绍了一种自适应特征分析算法,用于估计样本协方差矩阵的特征结构。通过探索协方差矩阵与其逆矩阵之间的特征值之间的关系来制定最小化非二次标准。提出了一种拟牛顿方法来执行最小化任务。结果表明,新算法可以作为另一种幂方法,但无需平方根运算。当该方法用于通过放气法迭代估计多个主成分时,该方法非常适合于并行实现。开发了统一的模块化体系结构,用于分析主要和次要组件。使用固定和非固定数据进行模拟实验。结果表明,该方法能够并行提取多个主成分,收敛速度快,跟踪精度高。 (c)2006 Elsevier Inc.保留所有权利。

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