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Relevance vector machines for multivariate calibration purposes

机译:相关向量机用于多变量校准

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The introduction of support vector regression (SVR) and least square support vector machines (LS-SVM) methods for regression purposes in the field of chemometrics has provided advantageous alternatives to the existing linear and nonlinear multivariate calibration (MVC) approaches. Relevance vector machines (RVMs) claim the advantages attributed to all the SVM-based methods over many other regression methods. Additionally, it also exhibits advantages over the standard SVM-based ones since: it is not necessary to estimate the error/margin trade-off parameter C and the insensitivity parameter e in regression tasks, it is applicable to arbitrary basis functions, the algorithm gives probability estimates seamlessly and offer, additionally, excellent sparseness capabilities, which can result in a simple and robust model for the estimation of different properties. This paper presents the use of RVMs as a nonlinear MVC method capable of dealing with ill-posed problems. To study its behavior, three different chemometric benchmark datasets are considered, including both linear and non-linear solutions. RVM was compared with other calibration approaches reported in the literature. Although RVM performance is comparable with the best results obtained by LS-SVM, the final model achieved is sparser, so the prediction process is faster. Taking into account the other advantages attributed to RVMs, it can be concluded that this technique can be seen as a very promising option to solve nonlinear problems in MVC.
机译:在化学计量学领域中出于回归目的而引入的支持向量回归(SVR)和最小二乘支持向量机(LS-SVM)方法为现有的线性和非线性多元校准(MVC)方法提供了有利的替代方法。相关向量机(RVM)拥有所有基于SVM的方法相对于许多其他回归方法的优势。此外,与基于SVM的标准方法相比,它还具有优势,因为:在回归任务中不必估计误差/边际权衡参数C和不敏感度参数e,它适用于任意基函数,该算法给出概率估计可以无缝地进行,并且还具有出色的稀疏性,这可以形成一个简单而健壮的模型来估计不同的属性。本文介绍了RVM作为能够处理不适定问题的非线性MVC方法的用途。为了研究其行为,考虑了三个不同的化学计量基准数据集,包括线性和非线性解决方案。将RVM与文献中报道的其他校准方法进行了比较。尽管RVM性能可与LS-SVM获得的最佳结果相媲美,但最终的模型较为稀疏,因此预测过程更快。考虑到RVM的其他优点,可以得出结论,该技术可以看作是解决MVC中非线性问题的非常有前途的选择。

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