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An Efficient Leave One Block Out approach to identify outliers

机译:一种有效的“一站式”排除方法,可识别异常值

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In Least Squares (LS), the linearized functional model between M observables and N unknown parameters is given. LS provides estimates of parameters, observables, residuals and a posteriori variance. To identify outliers and to estimate accuracies and reliabilities, tests on the model and on the individual residuals can be performed at different levels of significance and power. However, LS is not robust: one outlier could be spread into all the residuals and its identification is difficult. A possible solution to this problem is given by a Leave One Block Out approach. Let's suppose that the observation vector can be decomposed into m sub-vectors (blocks) that are reciprocally uncorrelated: in the case of completely uncorrelated observations, m = M. A suspected block is excluded from the adjustment, whose results are used to check it. Clearly, the check is more robust, because one outlier in the excluded block does not affect the adjustment results. The process can be repeated on all the blocks, but can be very slow, because m adjustments must be computed. To efficiently apply Leave One Block Out, an algorithm has been studied. The usual LS adjustment is performed on all the observations to obtain the 'batch' results. The contribution of each block is subtracted from the batch results by algebraic decompositions, with a minimal computational effort: this holds for parameters, a posteriori residuals and variance. Therefore all the blocks can be checked. In the paper, the algorithm is discussed. Two examples of ELOBO application are presented: the first testifies ELOBO reliability against classical LS tests. In the second, ELOBO numerical efficiency is analyzed.
机译:在最小二乘(LS)中,给出了M个可观测值和N个未知参数之间的线性化功能模型。 LS提供参数,可观测值,残差和后验方差的估计。为了识别异常值并估计准确性和可靠性,可以在显着性和功效的不同级别上对模型和单个残差进行测试。但是,LS并不健壮:一个异常值可能会扩散到所有残差中,并且难以识别。解决这个问题的一种可能的解决方法是“留下一个阻止”方法。假设观测向量可以分解为互不相关的m个子向量(块):在观测值完全不相关的情况下,m =M。可疑块从调整中排除,其结果用于对其进行检查。显然,检查更加健壮,因为排除块中的一个异常值不会影响调整结果。可以在所有块上重复该过程,但过程可能很慢,因为必须计算m个调整。为了有效地应用“留下一个阻止”,已经研究了一种算法。通常对所有观察值进行LS调整,以获得“批”结果。通过代数分解从批处理结果中减去每个块的贡献,而所需的计算量却最小:这适用于参数,后验残差和方差。因此,可以检查所有块。本文讨论了该算法。给出了ELOBO应用的两个示例:第一个证明了ELOBO相对于经典LS测试的可靠性。在第二部分中,分析了ELOBO数值效率。

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