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A fast algorithm for globally solving Tikhonov regularized total least squares problem

机译:全局求解Tikhonov正则化总最小二乘问题的快速算法

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摘要

The total least squares problem with the general Tikhonov regularization can be reformulated as a one-dimensional parametric minimization problem (PM), where each parameterized function evaluation corresponds to solving an n-dimensional trust region subproblem. Under a mild assumption, the parametric function is differentiable and then an efficient bisection method has been proposed for solving (PM) in literature. In the first part of this paper, we show that the bisection algorithm can be greatly improved by reducing the initially estimated interval covering the optimal parameter. It is observed that the bisection method cannot guarantee to find the globally optimal solution since the nonconvex (PM) could have a local non-global minimizer. The main contribution of this paper is to propose an efficient branch-and-bound algorithm for globally solving (PM), based on a new underestimation of the parametric function over any given interval using only the information of the parametric function evaluations at the two endpoints. We can show that the new algorithm (BTD Algorithm) returns a global E-approximation solution in a computational effort of at most O(n3/) under the same assumption as in the bisection method. The numerical results demonstrate that our new global optimization algorithm performs even much faster than the improved version of the bisection heuristic algorithm.
机译:常规Tikhonov正则化的总最小二乘问题可以重新表示为一维参数最小化问题(PM),其中每个参数化函数评估都对应于解决n维信任区子问题。在温和的假设下,参数函数是可微的,然后在文献中提出了一种有效的二等分方法来求解(PM)。在本文的第一部分,我们表明可以通过减少覆盖最佳参数的初始估计间隔来极大地改善二等分算法。可以看出,二分法不能保证找到全局最优解,因为非凸(PM)可能具有局部非全局最小化器。本文的主要贡献是基于仅使用两个端点处参数函数评估的信息,在任何给定时间间隔内对参数函数的新低估,提出了一种有效的全局求解分支定界算法(PM) 。我们可以证明,在与二等分方法相同的假设下,新算法(BTD算法)以最多O(n3 /)的计算量返回全局E逼近解。数值结果表明,我们新的全局优化算法的性能比对分启发式算法的改进版本要快得多。

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