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A Newton Root-Finding Algorithm For Estimating the Regularization Parameter For Solving Ill-Conditioned Least Squares Problems

机译:一种牛顿根查找算法,用于估计解决病态最小二乘问题的正则化参数

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摘要

We discuss the solution of numerically ill-posed overdetermined systems of equations using Tikhonov a-priori-based regularization. When the noise distribution on the measured data is available to appropriately weight the fidelity term, and the regularization is assumed to be weighted by inverse covariance information on the model parameters, the underlying cost functional becomes a random variable that follows a X2 distribution. The regularization parameter can then be found so that the optimal cost functional has this property. Under this premise a scalar Newton root-finding algorithm for obtaining the regularization parameter is presented. The algorithm, which uses the singular value decomposition of the system matrix is found to be very efficient for parameter estimation, requiring on average about 10 Newton steps. Additionally, the theory and algorithm apply for Generalized Tikhonov regularization using the generalized singular value decomposition. The performance of the Newton algorithm is contrasted with standard techniques, including the L-curve, generalized cross validation and unbiased predictive risk estimation. This X2-curve Newton method of parameter estimation is seen to be robust and cost effective in comparison to other methods, when white or colored noise information on the measured data is incorporated.
机译:我们讨论了基于Tikhonov基于先验的正则化的数值不适定方程组的解。当测量数据上的噪声分布可用于适当地对保真度项进行加权时,并且假设正则化是通过模型参数上的逆协方差信息加权的,则基础成本函数将成为遵循X2分布的随机变量。然后可以找到正则化参数,以便最佳成本函数具有此属性。在此前提下,提出了一种用于获取正则化参数的标量牛顿寻根算法。发现使用系统矩阵奇异值分解的算法对于参数估计非常有效,平均需要约10牛顿步长。另外,该理论和算法适用于使用广义奇异值分解的广义Tikhonov正则化。牛顿算法的性能与标准技术形成对比,包括L曲线,广义交叉验证和无偏预测风险估计。当结合了测量数据上的白色或彩色噪声信息时,与其他方法相比,这种参数估计的X2曲线牛顿方法被认为是健壮且具有成本效益的。

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    Mead Jodi; Renaut Rosemary;

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  • 年度 2009
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