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Consistent Cross-Validatory Model-Selection for Dependent Data: hv-Block Cross-Validation.

机译:相依数据的一致交叉验证模型选择:hv块交叉验证。

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摘要

This paper considers the impact of Shao's (1993) recent results regarding the asymptotic inconsistency of model selection via leave-one-out cross-validation on h-block cross-validation, a cross-validatory method for dependent data proposed by Burman, Chow and Nolan (199). It is shown that h-block cross-validation is inconsistent in the sense of Shao (1993) and therefore is not asymptotically optimal. A modification of the h-block method, dubbed "hv-block" cross-validation, is proposed which is asymptotically optimal. The proposed approach is consistent for general stationary observations in the sense that the probability of selecting the model with the best predictive ability converges to 1 as the total number of observations approaches infinity. This extends existing results and yields a new approach that contains leave-one-out cross-validation, leave-n[subscript v]-out cross-validation, and h-block cross-validation as special cases. Applications are considered.
机译:本文考虑了邵(1993)最近关于通过留一法交叉验证进行模型选择的渐进不一致性对h块交叉验证的影响,这是Burman,Chow和诺兰(199)。从Shao(1993)的意义上讲,h块交叉验证是不一致的,因此不是渐近最优的。提出了对h块方法的一种改进,称为“ hv块”交叉验证,它是渐近最优的。所提出的方法与一般静态观测是一致的,因为当观测总数接近无穷大时,选择具有最佳预测能力的模型的概率收敛至1。这扩展了现有结果,并产生了一种新方法,该方法包含留一法式交叉验证,留一法n [下标v]式交叉验证和h块式交叉验证。考虑应用。

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