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Nonexistence of Rigorous Tests for Multiple Outlier Detection in Least-Squares Adjustment

机译:最小二乘平差中多个异常值检测的严格测试的不存在

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摘要

The present paper focuses on the theory of outlier detection in least-squares adjustment. Although the case of a single outlier can be efficiently handled, extensions of the testing theory to the multiple outlier case seem questionable in rigor or applicability. This contribution is a demonstration that unambiguous determination of the vector of outliers from least-squares residuals is impossible without additional hypotheses. One such hypothesis, the single outlier hypothesis, is also proven to be sufficient (with just one exception) for the residual analysis to be conclusive in the process of outlier identification.
机译:本文着重于最小二乘平差中离群值检测的理论。尽管可以有效地处理单个异常值的情况,但是将测试理论扩展到多个异常值的情况似乎在严格性或适用性方面存在问题。这一贡献表明,如果没有其他假设,就不可能从最小二乘残差中明确确定异常值的向量。一种这样的假设,即单一异常值假设,也被证明足以(只有一个例外)使残差分析在异常值识别过程中具有决定性。

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