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Functional outlier detection and taxonomy by sequential transformations

机译:通过顺序转换功能异常检测和分类

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Functional data analysis can be seriously impaired by abnormal observations, which can be classified as either magnitude or shape outliers based on their way of deviating from the bulk of data. Identifying magnitude outliers is relatively easy, while detecting shape outliers is much more challenging. We propose turning the shape outliers into magnitude outliers through data transformation and detecting them using the functional boxplot. Besides easing the detection procedure, applying several transformations sequentially provides a reasonable taxonomy for the flagged outliers. A joint functional ranking, which consists of several transformations, is also defined here. Simulation studies are carried out to evaluate the performance of the proposed method using different functional depth notions. Interesting results are obtained in several practical applications. (C) 2020 Elsevier B.V. All rights reserved.
机译:功能数据分析可以根据异常观察严重损害,这可以基于其偏离大部分数据的方式被归类为幅度或形状异常值。 识别幅度异常值相对容易,而检测到形状异常值更具挑战性。 我们提出通过数据转换将形状异常值转换为幅度异常值,并使用功能盒子检测它们。 除了缓解检测程序之外,依次依次应用若干变换,为标记的异常值提供合理的分类。 这里还定义了由几种转换组成的关节功能排名。 进行仿真研究以评估使用不同功能深度概念的提出方法的性能。 有趣的结果是在几种实际应用中获得的。 (c)2020 Elsevier B.V.保留所有权利。

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