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A Novel Interpolation Method Based on Differential Evolution-Simplex Algorithm Optimized Parameters for Support Vector Regression

机译:一种基于差分演进 - 单面算法的新型插值方法,用于支持向量回归的优化参数

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Support Vector Machine (SVM) is a machine learning method based on Structural Risk Minimization (SRM). In traditional SVM, different selections of hyper-parameters have a significant effect on the forecast performance. Differential evolution algorithm (DE) is a rapid evolutionary algorithm based on the real-code, which can avoid the local optimization by the differential mutation operation between individuals. Simplex searching algorithm is a direct searching algorithm which solves nonconstraint nonlinear programming problems. This paper introduces the application of SVM in the spatial interpolation in geosciences field. It proposes a new method of optimizing parameters of SVM based on DE algorithm and simplex algorithm. Firstly, DE algorithm is used to obtain the initial value of simplex algorithm, then the simplex local searching strategy is applied to optimize SVR parameters for the second time. Moreover, the spatial interpolation simulation is conducted on the standard dataset of SIC2004. The case study illustrates that the proposed algorithm has higher forecast accuracy and proves the validity of the method.
机译:支持向量机(SVM)是一种基于结构风险最小化(SRM)的机器学习方法。在传统的SVM中,不同选择的超参数对预测性能有显着影响。差分演进算法(DE)是一种基于实际码的快速进化算法,其可以避免各个之间的差分突变操作的局部优化。 Simplex搜索算法是一种直接搜索算法,其解决了非线性非线性编程问题。本文介绍了SVM在地球科学领域空间插值中的应用。它提出了一种基于DE算法和单纯x算法的优化SVM参数的新方法。首先,DE算法用于获得Simplex算法的初始值,然后应用Simplex本地搜索策略来为第二次优化SVR参数。此外,在SIC2004的标准数据集上进行空间插值模拟。案例研究表明,所提出的算法具有更高的预测精度,并证明了该方法的有效性。

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