首页> 外文会议>International Workshop on Intelligent Systems and Applications >MODEL SELECTION OF LEAST SQUARES SUPPORT VECTOR REGRESSION USING QUANTUM-BEHAVED PARTICLE SWARM OPTIMIZATION ALGORITHM
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MODEL SELECTION OF LEAST SQUARES SUPPORT VECTOR REGRESSION USING QUANTUM-BEHAVED PARTICLE SWARM OPTIMIZATION ALGORITHM

机译:使用量子行为粒子群优化算法的最小二乘的模型选择支持向量回归

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The selection for hyper-parameters is difficult and important to the performance of Least Squares Support Vector Machines (LS-SVM). The existed parameters selection algorithms, such as the analytical, algebraic techniques and particle swarm optimization (PSO) algorithm, have their own shortcomings. In this paper, the problem of model selection for LS-SVM is discussed and a new method selecting the LS-SVM hyper-parameters is proposed based on the principles of the quantum-behaved particle swarm optimization (QPSO). The feasibility of this method is evaluated on data sets produced by sinc function. Experimental results show that LS-SVM of QPSO-based hyper-parameters selection obtains better generalization capability and has more fast convergence speed than PSO-based hyper-parameters selection. Furthermore, the proposed method was applied to establish a soft-sensor model for content of Bisphenol A (CBPA) in rearrangement productive process. The results of real data simulation also show that this method is effective.
机译:对于最小二乘支持向量机(LS-SVM)的性能,对超参数的选择是困难和重要的。存在的参数选择算法,例如分析,代数技术和粒子群优化(PSO)算法,具有自己的缺点。在本文中,讨论了LS-SVM模型选择的问题,并基于量子行为粒子群优化(QPSO)的原理提出了选择LS-SVM超参数的新方法。对SINC功能产生的数据集进行评估该方法的可行性。实验结果表明,基于QPSO的超参数选择的LS-SVM获得了更好的泛化能力,并且具有比基于PSO的超参数选择更快的收敛速度。此外,应用所提出的方法以建立重排生产过程中双酚A(CBPA)含量的软传感器模型。实际数据仿真的结果还表明该方法是有效的。

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