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首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >Adaptive truncation of matrix decompositions and efficient estimation of NMR relaxation distributions
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Adaptive truncation of matrix decompositions and efficient estimation of NMR relaxation distributions

机译:矩阵分解的自适应截断和NMR弛豫分布的有效估计

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摘要

The two most successful methods of estimating the distribution of nuclear magnetic resonance relaxation times from two dimensional data are data compression followed by application of the Butler-Reeds-Dawson algorithm, and a primal-dual interior point method using preconditioned conjugate gradient. Both of these methods have previously been presented using a truncated singular value decomposition of matrices representing the exponential kernel. In this paper it is shown that other matrix factorizations are applicable to each of these algorithms, and that these illustrate the different fundamental principles behind the operation of the algorithms. These are the rank-revealing QR (RRQR) factorization and the LDL factorization with diagonal pivoting, also known as the Bunch-Kaufman-Parlett factorization. It is shown that both algorithms can be improved by adaptation of the truncation as the optimization process progresses, improving the accuracy as the optimal value is approached. A variation on the interior method viz, the use of barrier function instead of the primal-dual approach, is found to offer considerable improvement in terms of speed and reliability. A third type of algorithm, related to the algorithm known as Fast iterative shrinkage-thresholding algorithm, is applied to the problem. This method can be efficiently formulated without the use of a matrix decomposition.
机译:从二维数据估计核磁共振弛豫时间分布的两种最成功的方法是数据压缩,然后应用Butler-Reeds-Dawson算法,以及使用预处理共轭梯度的原始-对偶内点方法。先前已经使用表示指数核的矩阵的截断奇异值分解来介绍这两种方法。本文表明,其他矩阵分解也适用于这些算法中的每一种,并且它们说明了算法操作背后的不同基本原理。这些是具有对角线透视的秩揭示QR(RRQR)分解和LDL分解,也称为Bunch-Kaufman-Parlett分解。结果表明,随着优化过程的进行,可以通过截断的适应来改进两种算法,并随着逼近最佳值而提高精度。发现内部方法的一种变化,即使用屏障函数代替原始对偶方法,在速度和可靠性方面提供了相当大的改进。与称为快速迭代收缩阈值算法的算法有关的第三种算法适用于该问题。无需使用矩阵分解即可有效地制定此方法。

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