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A Symmetrical Model Applied to Interval-Valued Data Containing Outliers with Heavy-Tail Distribution

机译:对称模型应用于包含重尾分布的异常值的区间值数据

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The aim of Symbolic Data Analysis (SDA) is to provide a set of techniques to summarize large data sets into smaller ones called symbolic data tables. This paper considers a kind of symbolic data called Interval-Valued Data (IVD) which stores data intrinsic variability and/or uncertainty from the original data set. Recent works have been proposed to fit the classic linear regression model to symbolic data. However, those works do not consider the presence of symbolic data outliers. Generally, most specialists treat outliers as errors and discard them. Nevertheless, a single interval-data outlier holds significant information which should not be discarded or ignored. This work introduces a prediction method for IVD based on the symmetrical linear regression (SLR) analysis whose response model is less susceptible to the IVD outliers. The model considers a symmetrical distribution for error which allows to the model possibility of applying regular statistical hypothesis tests.
机译:符号数据分析(SDA)的目的是提供一组技术,以将大型数据集汇总为较小的数据集,称为符号数据表。本文考虑了一种称为间隔值数据(IVD)的符号数据,该数据存储了原始数据集中的数据固有变异性和/或不确定性。已经提出了将经典线性回归模型拟合到符号数据的最新工作。但是,这些工作没有考虑符号数据离群值的存在。通常,大多数专家将异常值视为错误并将其丢弃。但是,单个间隔数据离群值包含重要信息,不应丢弃或忽略这些信息。这项工作介绍了一种基于对称线性回归(SLR)分析的IVD预测方法,该方法的响应模型对IVD离群值的敏感性较小。该模型考虑了误差的对称分布,这使得该模型有可能应用常规的统计假设检验。

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