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Kernel Ridge Regression with Autocorrelation Prior: Optimal Model and Cross-Validation

机译:内核RIDGE回归自相关:最佳模型和交叉验证

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Kernel regression problem with autocorrelation prior is discussed in this paper. We revealed the optimal model of the kernel ridge regression in terms of the expected generalization error under the assumed autocorrelation prior. This result agrees with the optimal model of the Gaussian process regression, whose optimality is specified by the conditional expectation by a given set of training samples. We also proved that the minimizer of the expected cross-validation criterion is reduced to the optimal model, which gives a novel aspect of nonasymptotic theoretical justification of the cross-validation technique in the kernel regression problem.
机译:本文讨论了自相关自相关的内核回归问题。 我们在假定的自相关误之前,我们揭示了内核RIDGE回归的最佳模型。 这一结果同意高斯过程回归的最佳模型,其最优性由一套培训样本的条件预期指定。 我们还证明了预期交叉验证标准的最小化器减少到最佳模型,这给出了内核回归问题中交叉验证技术的非对症理论典范的新颖方面。

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