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Robust statistics in data analysis -- A review Basic concepts

机译:数据分析中可靠的统计信息-概述基本概念

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摘要

Presence of outliers in chemical data affects all least squares models, which are extensively used in chemometrics for data exploration and modeling. Therefore, more and more attention is paid to the so-called robust models and robust statistics that aim to construct models and estimates describing well data majority. Moreover, construction of robust models allows identifying outlying observations. The outliers identification is not only essential for a proper modeling but also for understanding the reasons for unique character of the outlying sample. In this paper some basic concepts of robust techniques are presented and their usefulness in chemometric data analysis is stressed.
机译:化学数据中异常值的存在会影响所有最小二乘法模型,该模型在化学计量学中广泛用于数据探索和建模。因此,越来越多地关注所谓的鲁棒模型和鲁棒统计,这些鲁棒模型和鲁棒统计旨在构建描述良好数据多数的模型和估计。此外,构建健壮的模型可以识别偏远的观察结果。离群值的识别不仅对于正确建模至关重要,而且对于理解离群样本具有独特特征的原因也至关重要。本文介绍了鲁棒技术的一些基本概念,并强调了它们在化学计量数据分析中的实用性。

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