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A Novel Ridgelet Kernel Regression Method

机译:一种新的ridgelet核回归方法

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In this paper, a ridgelet kernel regression model is proposed for approximation of multivariate functions, especially those with certain kinds of spatial inhomogeneities. It is based on ridgelet theory, kernel and regularization technology from which we can deduce a regularized kernel regression form. Using the objective function solved by quadratic programming to define a fitness function, we adopt particle swarm optimization algorithm to optimize the directions of ridgelets. Theoretical analysis proves the superiority of ridgelet kernel regression for multivariate functions. Experiments in regression indicate that it not only outperforms support vector machine for a wide range of multivariate functions, but also is robust and quite competitive on training of time.
机译:在本文中,提出了一种ridgelet核回归模型,用于近似多元函数,尤其是具有某些类型的空间不均匀性的函数。它基于Ridgelet理论,内核和正则化技术,我们可以从中推测正数内核回归形式。使用二次编程解决的目标函数来定义健身功能,我们采用粒子群优化算法优化了ridgelets的方向。理论分析证明了对多元函数的ridgelet核回归的优越性。回归的实验表明,它不仅优于多变量功能的支持向量机,而且对时间的培训也很稳健且相当有竞争力。

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