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Robust partial least squares regression:Part II,new algorithm and benchmark studies

机译:鲁棒的偏最小二乘回归:第二部分,新算法和基准研究

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This paper presents the second part of the work on robust partial least squares(RPLS)regression and develops a new RPLS algorithm based on the concept laid out in Part I.The paper also contrasts the new algorithm with existing work using two simulation examples.This comparison highlights(i)the impact of the flaws in existing RPLS work and(ii)the compromised sensitivity resulting from introducing simplifications to the determination of the Stahel-Donoho estimator(SDE).The paper finally presents an evaluation of the computational complexity of RPLS algorithms and examines the impact of the signal-to-noise ratio(SNR)upon the sensitivity of detecting outliers.The third part of this work will examine practical aspects of RPLS applications based on the analysis of experimental data.
机译:本文介绍了鲁棒偏最小二乘(RPLS)回归的工作的第二部分,并基于第一部分中提出的概念开发了一种新的RPLS算法。本文还通过两个仿真示例将新算法与现有工作进行了对比。比较突出显示了(i)现有RPLS工作中缺陷的影响以及(ii)为简化Stasta-Donoho估计量(SDE)的确定而导致的敏感性下降。本文最后提出了RPLS计算复杂度的评估并研究信噪比(SNR)对离群值检测灵敏度的影响。第三部分将基于对实验数据的分析,探讨RPLS应用的实际情况。

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