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Selective Ensemble Least Square Support Vector Machine with Its Application

机译:选择性集成最小二乘支持向量机及其应用

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Kernel-based modeling methods have been used widely to estimate some difficulty-to-measure quality or efficient indices at different industrial applications. Least square support vector machine (LSSVM) is one of the popular ones. However, its learning parameters, i.e., kernel parameter and regularization parameter, are sensitive to the training data and the model’s prediction performance. Ensemble modeling method can improve the generalization performance and reliability of the soft measuring model. Aim at these problems, a new adaptive selective ensemble (SEN) LSSVM (SEN-LSSVM) algorithm is proposed by using multiple learning parameters. Candidate regularization parameters and candidate kernel parameters are used to construct many of candidate sub-sub-models based on LSSVM. These sub-sub-models based on the same kernel parameter are selected and combined as candidate SEN-sub-models by using branch and bound-based SEN (BBSEN). By employing BBSEN at the second time, these SEN-sub-models based on different kernel parameters are used to obtain the final soft measuring model. Thus, multiple kernel and regularization parameters are adaptive selected for building SEN-LSSVM model. UCI benchmark datasets and mechanical frequency spectral data are used to validate the effectiveness of this method.
机译:基于核的建模方法已被广泛用于估计不同工业应用中一些难以测量的质量或有效指标。最小二乘支持向量机(LSSVM)是最受欢迎的机器之一。但是,其学习参数(即内核参数和正则化参数)对训练数据和模型的预测性能敏感。集成建模方法可以提高软测量模型的泛化性能和可靠性。针对这些问题,提出了一种通过使用多个学习参数的新的自适应选择性集成(SEN)LSSVM(SEN-LSSVM)算法。候选正则化参数和候选内核参数用于基于LSSVM构造许多候选子模型。通过使用基于分支和基于边界的SEN(BBSEN),选择基于相同内核参数的这些子子模型并将其组合为候选SEN子模型。通过第二次使用BBSEN,这些基于不同内核参数的SEN子模型将用于获得最终的软测量模型。因此,自适应地选择多个内核和正则化参数以建立SEN-LSSVM模型。使用UCI基准数据集和机械频谱数据来验证此方法的有效性。

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