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Order Selection of Autoregressive Processes Using Bridge Criterion

机译:使用桥准则的自回归过程的顺序选择

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A new criterion is introduced for determining the order of an autoregressive model fit to time series data. The proposed technique is shown to give a consistent and asymptotically efficient order estimation. It has the benefits of the two well-known model selection techniques, the Akaike information criterion and the Bayesian information criterion. When the true order of the autoregression is relatively large compared with the sample size, the Akaike information criterion is known to be efficient, and the new criterion behaves in a similar manner. When the true order is finite and small compared with the sample size, the Bayesian information criterion is known to be consistent, and so is the new criterion. Thus the new criterion builds a bridge between the two classical criteria automatically. In practice, where the observed time series is given without any prior information about the autoregression, the proposed order selection criterion is more flexible and robust compared with classical approaches. Numerical results are presented demonstrating the robustness of the proposed technique when applied to various datasets.
机译:引入了新的标准,用于确定适合时间序列数据的自回归模型的顺序。所提出的技术显示出给出一致且渐近有效的阶数估计。它具有两种著名的模型选择技术Akaike信息准则和Bayes信息准则的优势。当自回归的真实阶数与样本大小相比相对较大时,已知Akaike信息准则是有效的,并且新准则的行为类似。当真实阶数是有限的并且与样本量相比较小时,已知贝叶斯信息准则是一致的,新准则也是如此。因此,新标准自动在两个经典标准之间建立了桥梁。实际上,在给出观察到的时间序列而没有有关自回归的任何先验信息的情况下,与经典方法相比,所提出的顺序选择标准更加灵活和健壮。数值结果表明了所提出的技术在应用于各种数据集时的鲁棒性。

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