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Condition Numbers and Least Squares Regression

机译:条件数和最小二乘回归

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摘要

Many problems in geometric modelling require the approximation of a set of data points by a weighted linear combination of basis functions. This yields an over-determined linear algebraic equation, which is usually solved in the least squares (LS) sense. The numerical solution of this problem requires an estimate of its condition number, of which there are several. These condition numbers are considered theoretically and computationally in this paper, and it is shown that they include a simple normwise measure that may overestimate by several orders of magnitude the true numerical condition of the LS problem, to refined componentwise and normwise measures. Inequalities that relate these condition numbers are established, and it is concluded that the solution of the LS problem may be well-conditioned in the normwise sense, even if one of its components is ill-conditioned. An example of regression using radial basis functions is used to illustrate the differences in the condition numbers.
机译:几何建模中的许多问题都需要通过基函数的加权线性组合来近似一组数据点。这产生了一个超定线性代数方程,通常在最小二乘(LS)意义上求解。此问题的数值解需要估计其条件数,其中有几个。本文从理论上和计算上考虑了这些条件数,并表明它们包括一个简单的范数测度,可以将LS问题的真实数值条件高估几个数量级,以细化分量法和范数测度。建立了与这些条件编号相关的不等式,得出的结论是,即使问题的组成部分之一条件不佳,LS问题的解决方案在规范意义上也可能条件良好。使用径向基函数进行回归的示例用于说明条件数的差异。

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