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A novel fusion approach based on induced ordered weighted averaging operators for chemometric data analysis

机译:基于诱导有序加权平均算子的化学数据分析融合新方法

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This paper proposes a novel approach for the estimation of spectroscopic data by combining the predictions of an ensemble of estimators using the induced ordered weighted averaging (IOWA) fusion operators. For ensemble generation, we use Gaussian process regression (GPR) and extreme learningmachine (ELM) estimators associated with different kernels. To render the model selection issue of ELM as efficiently as in the GPR Bayesian estimationmethod, we develop an automatic solution based on the powerful differential evolution (DE) algorithm. During the fusion process, the IOWA operator needs two things: (1) an order-inducing value; and (2) a way to determine its weights. For the orderinducing value, we propose to use the residual of each estimated output value. Because we cannot compute the true residual, we explore the idea of estimating the residuals themselves by associating to each estimator of the ensemble a second estimator of the same kind called a residual estimator. To learn the weights associated with these nonlinear operators, the proposed method relies on the concept of prioritized aggregation, where we generate the weights directly from the estimated residuals. Experimental results obtained on three real spectroscopic datasets confirm the interesting capabilities of the proposed IOWA fusion method.
机译:本文提出了一种新颖的方法,通过使用诱导有序加权平均(IOWA)融合算子结合估计器集合的预测,来估计光谱数据。对于集成生成,我们使用与不同内核相关的高斯过程回归(GPR)和极限学习机(ELM)估计器。为了像在GPR贝叶斯估计方法中一样高效地呈现ELM的模型选择问题,我们开发了基于强大的差分演化(DE)算法的自动解决方案。在融合过程中,IOWA操作员需要两件事:(1)诱导订单的价值; (2)一种确定其权重的方法。对于订单诱导值,我们建议使用每个估计输出值的残差。因为我们无法计算真实残差,所以我们探索了通过将整体的每个估计量与一个第二类型的估计量(称为残差估计量)相关联来估计残差本身的想法。为了学习与这些非线性算子相关的权重,所提出的方法依赖于优先聚合的概念,在这里我们直接从估计的残差中生成权重。在三个真实的光谱数据集上获得的实验结果证实了所提出的IOWA融合方法的有趣功能。

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