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首页> 外文期刊>IEEE Transactions on Signal Processing >Autoregressive model order selection by a finite sample estimator for the Kullback-Leibler discrepancy
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Autoregressive model order selection by a finite sample estimator for the Kullback-Leibler discrepancy

机译:有限样本估计量对Kullback-Leibler差异进行自回归模型阶数选择

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The finite sample information criterion (FSIC) is introduced as an estimator for the Kullback-Leibler discrepancy of an autoregressive time series. It is derived especially for order selection in finite samples, where model orders are greater than one tenth of the sample size. It uses a theoretical expression for the ratio between the squared prediction error and the residual variance its the penalty factor for additional parameters in a model. This ratio can be found with the finite sample theory for autoregressive estimation, which is based on empirical approximations for the variance of parameters. It takes into account the different number of degrees of freedom that are available effectively in the various algorithms for autoregressive parameter estimation. The performance of FSIC has been compared with existing order selection criteria in simulation experiments using four different estimation methods. In finite samples, the FSIC selects model orders with a better objective quality for all estimation methods.
机译:引入了有限样本信息标准(FSIC)作为自回归时间序列的Kullback-Leibler差异的估计量。它是专门为模型订单大于样本大小的十分之一的有限样本中的订单选择而派生的。它使用理论表达式表示预测误差的平方和残差之间的比率,以及模型中其他参数的惩罚因子。可以使用有限样本理论进行自回归估计,该比率基于参数方差的经验近似值。它考虑了可用于自动回归参数估计的各种算法中有效使用的不同自由度数。在模拟实验中,使用四种不同的估计方法将FSIC的性能与现有的订单选择标准进行了比较。在有限样本中,FSIC为所有估计方法选择具有更好客观质量的模型阶。

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