Monitoring Diesel Fuels with Supervised Distance Preserving Projections and Local Linear Regression

F. Corona, Zhanxing Zhu, Amauri H. Souza Junior, M. Mulas, G. Barreto, R. Baratti
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Abstract

In this work, we discuss a recently proposed approach for supervised dimensionality reduction, the Supervised Distance Preserving Projection (SDPP) and, we investigate its applicability to monitoring material's properties from spectroscopic observations using Local Linear Regression (LLR). An experimental evaluation is conducted to show the performance of the SDPP and LLR and compare it with a number of state-of-the-art approaches for unsupervised and supervised dimensionality reduction. For the task, the results obtained on a benchmark problem consisting of a set of NIR spectra of diesel fuels and six different chemico-physical properties of those fuels are discussed. Based on the experimental results, the SDPP leads to accurate and parsimonious projections that can be effectively used in the design of estimation models based on local linear regression.
用监督距离保持投影和局部线性回归监测柴油燃料
在这项工作中,我们讨论了最近提出的一种监督降维方法,即监督距离保持投影(SDPP),并研究了它在利用局部线性回归(LLR)从光谱观测中监测材料性质方面的适用性。进行了实验评估,以显示SDPP和LLR的性能,并将其与许多最先进的无监督和有监督降维方法进行比较。为此,讨论了由柴油近红外光谱和六种不同化学物理性质组成的基准问题的结果。实验结果表明,SDPP预测结果准确、简洁,可有效地用于基于局部线性回归的估计模型设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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