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Least squares in general vector spaces revisited

机译:再谈一般向量空间中的最小二乘

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Approximation theory and the theory of optimization provide algebraic theorems characterizing the global minima of a quadratic functional on a linear variety in abstract vector spaces. Surprisingly, little use has been made of these results in statistics. Estimating equations for M-estimalors and optimalily results in best or minimax, estimation are usually derived by more or less unhandy techniques of calculus. This even applies to results that could be gained without effort from algebraic theorems. The purpose of the present paper is to recall an elementary vector space minimum theorem and to exhibit the case of its use.
机译:逼近理论和最优化理论提供了代数定理,这些定理描述了抽象向量空间中线性变量上二次函数的全局极小值。令人惊讶的是,在统计中很少使用这些结果。为M个估计子估计方程并最佳地得出最佳或最小极大,估计通常是通过或多或少的微积分技术获得的。这甚至适用于无需代数定理即可获得的结果。本文的目的是回顾一个基本的向量空间最小定理,并展示其使用的情况。

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