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A comparative study of linear regression methods in noisy environments

机译:嘈杂环境中线性回归方法的比较研究

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摘要

With the development of measurement instrumentation methods and metrology, one is very often able to rigorously specify the uncertainty associated with each measured value (e.g. concentrations, spectra, process sensors). The use of this information, along with the corresponding raw measurements, should, in principle, lead to more sound ways of performing data analysis, since the quality of data can be explicitly taken into account. This should be true, in particular, when noise is heteroscedastic and of a large magnitude. In this paper we focus on alternative multivariate linear regression methods conceived to take into account data uncertainties. We critically investigate their prediction and parameter estimation capabilities and suggest some modifications of well-established approaches. All alternatives are tested under simulation scenarios that cover different noise and data structures. The results thus obtained provide guidelines on which methods to use and when. Interestingly enough, some of the methods that explicitly incorporate uncertainty information in their formulations tend to present not as good performances in the examples studied, whereas others that do not do so present an overall good performance. Copyright © 2005 John Wiley & Sons, Ltd.
机译:随着测量仪器方法和计量技术的发展,人们通常能够严格指定与每个测量值(例如浓度,光谱,过程传感器)相关的不确定性。原则上,此信息的使用以及相应的原始测量应导致采用更合理的方式进行数据分析,因为可以明确考虑数据的质量。特别是当噪声为异方差且幅度很大时,这应该是正确的。在本文中,我们专注于考虑数据不确定性的多元线性回归方法。我们批判性地调查了它们的预测和参数估计能力,并提出了一些完善方法的修改建议。所有替代方案均在涵盖不同噪声和数据结构的模拟场景下进行了测试。这样获得的结果为使用哪种方法以及何时使用提供了指导。有趣的是,某些将不确定性信息明确纳入其公式的方法在所研究的示例中往往表现不佳,而其他方法却没有表现出总体良好的表现。版权所有©2005 John Wiley&Sons,Ltd.

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