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Condition numbers for a linear function of the solution of the linear least squares problem with equality constraints

机译:平等约束线性最小二乘问题解决方案的线性函数的条件数字

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摘要

In this paper, we consider the normwise, mixed and componentwise condition numbers for a linear function Lx of the solution x to the linear least squares problem with equality constraints (LSE). The explicit expressions of the normwise, mixed and componentwise condition numbers are derived. Also, we revisit some previous results on the condition numbers of linear least squares problem (LS) and LSE. It is shown that some previous explicit condition number expressions on LS and LSE can be recovered from our new derived condition numbers' formulas. The sharp upper bounds for the derived normwise, mixed and componentwise condition numbers are obtained, which can be estimated efficiently by means of the classical Hager Higham algorithm for estimating matrix one norm. Moreover, the proposed condition estimation methods can be incorporated into the generalized QR factorization method for solving LSE. The numerical examples show that when the coefficient matrices of LSE are sparse and badly-scaled, the mixed and componentwise condition numbers can give sharp perturbation bounds, on the other hand normwise condition numbers can severely overestimate the exact relative errors because normwise condition numbers ignore the data sparsity and scaling. However, from the numerical experiments for random LSE problems, if the data is not either sparse or badly scaled, it is more suitable to adopt the normwise condition number to measure the conditioning of LSE since the explicit formula of the normwise condition number is more compact. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,我们考虑了范数型,混合和分量型条件数为线性函数Lx的解x的给线性最小二乘问题与等式约束(LSE)。在范数型的精确表达式,混合和分量型条件数的。此外,我们重温线性最小二乘问题(LS)和LSE的条件数以前的一些结果。结果表明,在LS和LSE以前的一些明确的条件数表达式可以从我们的新派生条件数的公式来恢复。派生范数型的尖锐上界,获得混合并分量型条件数,其可以有效地通过经典海格Higham的算法用于估计矩阵范数一个来估计。此外,提出的状态推定方法可以被并入到用于解决LSE广义QR分解方法。各数值实施例表明,当LSE的系数矩阵是稀疏的和严重缩放的,混合的和分量型条件数可以给锋利的扰动界,在另一方面范数型条件的数字,因为范数型条件号码忽略会严重高估了精确的相对误差数据稀疏和缩放。然而,从对随机LSE问题数值实验中,如果数据是不要么稀疏或严重缩放,它更适合采用范数型条件数来测量由于范数型条件数的显式公式LSE的调节是更紧凑的。 (c)2018年elestvier b.v.保留所有权利。

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