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A reproducing Kernel Hilbert space approach to functional linear regression

机译:函数线性回归的再现核Hilbert空间方法

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摘要

We study in this paper a smoothness regularization method for functional linear regression and provide a unified treatment for both the prediction and estimation problems. By developing a tool on simultaneous diagonalization of two positive definite kernels, we obtain shaper results on the minimax rates of convergence and show that smoothness regularized estimators achieve the optimal rates of convergence for both prediction and estimation under conditions weaker than those for the functional principal components based methods developed in the literature. Despite the generality of the method of regularization, we show that the procedure is easily implementable. Numerical results are obtained to illustrate the merits of the method and to demonstrate the theoretical developments.
机译:我们在本文中研究了用于函数线性回归的平滑正则化方法,并为预测和估计问题提供了统一的处理方法。通过开发两个正定核同时对角化的工具,我们获得了关于最小极大收敛率的整形结果,并表明光滑性正则估计量在弱于功能主成分的条件下实现了预测和估计的最优收敛率基于文献中开发的方法。尽管正则化方法具有一般性,但我们表明该过程易于实现。数值结果表明了该方法的优点并说明了理论发展。

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