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Minimum l(1), l(2), and l(infinity) norm approximate solutions to an overdetermined system of linear equations

机译:超定线性方程组的最小l(1),l(2)和l(无穷)范数近似解

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Many practical problems encountered in digital signal processing and other quantitative oriented disciplines entail finding a best approximate solution to an overdetermined system of linear equations. Invariably, the least squares error approximate solution (i.e., minimum l(2) norm) is chosen for this task due primarily to the existence of a convenient closed expression for its determination. It should be noted, however, that in many applications a minimum l(1) or l(infinity) norm approximate solution is preferable. For example, in cases where the data being analyzed contain a few data outliers a minimum l(1) approximate solution is preferable since it tends to ignore bad data points. In other applications one may wish to determine an approximate solution whose largest error magnitude is the smallest possible (i.e., a minimum l(infinity) norm approximate solution). Unfortunately, there do not exist convenient closed form expressions for either the minimum l(1) or the minimum l(infinity) norm approximate solution and one must resort to nonlinear programming methods for their determination. Effective algorithms for determining these two solutions are herein presented (see Cadzow, J. A., Data Analysis and Signal Processing: Theory and Applications). (C) 2002 Elsevier Science (USA). [References: 19]
机译:在数字信号处理和其他面向定量的学科中遇到的许多实际问题都需要为超定线性方程组找到最佳近似解决方案。始终都会为该任务选择最小二乘误差近似解(即最小值l(2)范数),这主要是因为存在用于确定其的便捷闭合表达式。但是,应该指出的是,在许多应用中,最小的l(1)或l(无穷)范数近似解是可取的。例如,在要分析的数据包含几个数据离群值的情况下,最好使用最小值为l(1)的近似解,因为它倾向于忽略不良数据点。在其他应用中,可能希望确定其最大误差量是最小的近似解(即,最小的l(无穷大)范数近似解)。不幸的是,对于最小的l(1)或最小的l(无穷)范数逼近解,不存在方便的闭式表达式,必须使用非线性编程方法来确定它们。本文介绍了确定这两种解决方案的有效算法(请参见Cadzow,J.A。,数据分析和信号处理:理论与应用)。 (C)2002 Elsevier Science(美国)。 [参考:19]

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