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Identifying density-based local outliers in medical multivariate circular data

机译:识别医疗多变量循环数据中的基于密度的本地异常值

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This article is considered to be the first to deal with the problem of outlier-detection in multivariate circular data. The proposed algorithm is an extension of the Local Outlier Factor (LOF) method. Two different circular distances are used; taking into account the close bounded range of circular variables, and testing all possible permutations. The performance of the algorithm is investigated via an extensive simulation study. The performance of the LOF algorithm has a direct relationship with concentration parameter, while it has an inverse relationship with the sample size. For illustrative purposes, the algorithm has been implemented on two medical multivariate circular data, namely, X-ray beam projectors data and eye data. The extension of the LOF algorithm for other types of directional data such as spherical and cylindrical datasets is worth to be investigated.
机译:本文被认为是首先处理多元循环数据中的异常检测问题。 所提出的算法是本地异常因素系数(LOF)方法的扩展。 使用两个不同的圆距; 考虑到圆形变量的紧密界限范围,并测试所有可能的排列。 通过广泛的仿真研究研究了算法的性能。 LOF算法的性能与浓度参数具有直接关系,而它具有与样本大小的反比关系。 出于说明性目的,该算法已经在两个医疗多变量循环数据上实现,即X射线束投影仪数据和眼睛数据。 值得研究用于其他类型的定向数据的LOF算法,例如球形和圆柱形数据集。

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