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Empirical information criteria for time series forecasting model selection

机译:时间序列预测模型选择的经验信息标准

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In this article, we propose a new empirical information criterion (EIC) for model selection which penalizes the likelihood of the data by a non-linear function of the number of parameters in the model. It is designed to be used where there are a large number of time series to be forecast. However, a bootstrap version of the EIC can be used where there is a single time series to be forecast. The EIC provides a data-driven model selection tool that can be tuned to the particular forecasting task. We compare the EIC with other model selection criteria including Akaike's information criterion (AIC) and Schwarz's Bayesian information criterion (BIC). The comparisons show that for the M3 forecasting competition data, the EIC outperforms both the AIC and BIC, particularly for longer forecast horizons. We also compare the criteria on simulated data and find that the EIC does better than existing criteria in that case also.
机译:在本文中,我们为模型选择提出了一种新的经验信息标准(EIC),该标准通过模型中参数数量的非线性函数来惩罚数据的可能性。它设计用于要预测大量时间序列的地方。但是,如果要预测单个时间序列,则可以使用EIC的引导版本。 EIC提供了一个数据驱动的模型选择工具,可以将其调整为特定的预测任务。我们将EIC与其他模型选择标准(包括Akaike信息标准(AIC)和Schwarz的贝叶斯信息标准(BIC))进行比较。比较表明,对于M3预测竞争数据,EIC优于AIC和BIC,尤其是对于更长的预测范围。我们还比较了模拟数据中的标准,发现在这种情况下,EIC的性能也要优于现有标准。

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