Outlier detection for multinomial data with a large number of categories

Pub Date : 2020-07-01 DOI:10.1142/S2010326320500082
Xiaona Yang, Zhaojun Wang, Xuemin Zi
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Abstract

This paper develops an outlier detection procedure for multinomial data when the number of categories tends to infinity. Most of the outlier detection methods are based on the assumption that the observations follow multivariate normal distribution, while in many modern applications, the observations either are measured on a discrete scale or naturally have some categorical structures. For such multinomial observations, there are rather limited approaches for outlier detection. To overcome the main obstacle, the least trimmed distances estimator for multinomial data and a fast algorithm to identify the clean subset are introduced in this work. Also, a threshold rule is considered through the asymptotic distribution of measure distance to identify outliers. Furthermore, a one-step reweighting scheme is proposed to improve the efficiency of the procedure. Finally, the finite sample performance of our method is evaluated through simulations and is compared with that of available outlier detection methods.
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具有大量类别的多项数据的离群值检测
本文提出了一种多项式数据在类别数趋于无穷大时的离群值检测方法。大多数离群值检测方法都是基于观测值服从多元正态分布的假设,而在许多现代应用中,观测值要么是在离散尺度上测量的,要么自然地具有一些分类结构。对于这样的多项观测,异常值检测的方法相当有限。为了克服这一主要障碍,本文引入了多项式数据的最小裁剪距离估计器和一种快速识别干净子集的算法。同时,通过测量距离的渐近分布,考虑阈值规则来识别异常值。在此基础上,提出了一种一步重赋权方案,提高了算法的效率。最后,通过仿真对本文方法的有限样本性能进行了评价,并与现有的离群点检测方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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