可列斯基分解
不完全Cholesky因式分解
QR分解
不完全LU分解
因式分解
最小度算法
预处理程序
矩阵分解
反向
计算机科学
数学
自相关矩阵
算法
应用数学
特征向量
自相关
迭代法
统计
量子力学
物理
几何学
作者
Noor Atinah Ahmad,Shazia Javed
出处
期刊:Nucleation and Atmospheric Aerosols
日期:2012-01-01
卷期号:: 437-440
摘要
A method for deriving an incomplete QR factorization preconditioner for adaptive filtering is proposed. The method combines a recursive inverse QR factorization with a dropping strategy. Inverse QR factorization is more efficient compared to conventional factorization methods in that it avoids direct computation of the inverse. By realizing the factorization using a series of Givens rotation, a direct calculation of the inverse Cholesky factor is possible through the use of matrix inversion lemma and some algebraic manipulation of the Givens parameters. A dropping strategy is designed to create sparseness in the inverse Cholesky factor therefore minimizing the computational complexity of the resulting algorithm. Simulation shows that the incomplete inverse Cholesky factor derived in this paper is able to reduce the spectral condition number of the autocorrelation matrix of the problem.
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