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A co-median approach to detect compositional outliers

机译:一种共同中值方法来检测成分异常值

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摘要

Compositional data consist of vectors of positive values summing up to a unit or to some fixed constant. They find application in chemometrics, geology, economics, psychometrics and many other field of studies. In statistical analysis many theoretical efforts have been dedicated to identify procedures able to accomodate outliers included in the estimation of the model even in compositional data. The principal purpose of this work is to introduce an alternative robust procedure, defined as COMCoDa, capable to cope with compositional outliers and based on median absolute deviation (MAD) and correlation median. The new method is first evaluated in a simulation study and then on real data sets. The algorithm requires considerably less computational time than other procedures already existing in literature, it works well for huge compositional data sets at any level of contamination.
机译:成分数据由正值的向量组成,这些向量的总和等于一个单位或某个固定常数。他们在化学计量学,地质学,经济学,心理计量学和许多其他研究领域中找到了应用。在统计分析中,已进行了许多理论上的努力来确定能够适应模型估计中甚至包括成分数据中的异常值的过程。这项工作的主要目的是介绍一种替代的鲁棒性程序,定义为COMCoDa,它能够根据中位数绝对偏差(MAD)和相关中位数来处理成分异常值。该新方法首先在仿真研究中进行评估,然后再在真实数据集上进行评估。与文献中已经存在的其他过程相比,该算法所需的计算时间要少得多,它适用于任何污染水平下的巨大成分数据集。

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