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Robust estimation for circular data

机译:循环数据的稳健估计

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摘要

The problems arising when there are outliers in a data set that follow a circular distribution are considered. A robust estimation of the unknown parameters is obtained using the methods of weighted likelihood and minimum disparity, each of which is defined for a general parametric family of circular data. The class of power divergence and the related residual adjustment function is investigated in order to improve the performance of the two methods which are studied for the Von Mises (circular normal) and the Wrapped Normal distributions. The techniques are illustrated via two examples based on a real data set and a Monte Carlo study, which also enables the discussion of various computational aspects.
机译:考虑当数据集中存在遵循循环分布的异常值时出现的问题。使用加权似然和最小视差的方法可以获得未知参数的鲁棒估计,每种方法都是为循环数据的一般参数族定义的。研究了功率散度的类别和相关的残差调整函数,以提高针对Von Mises(圆正态)和Wrapped正态分布研究的两种方法的性能。通过两个基于真实数据集的示例和蒙特卡洛研究对这些技术进行了说明,这也使人们能够讨论各种计算方面。

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