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Selection of order and type of time series models estimated from reduced statistics

机译:根据减少的统计量估计的时间序列模型的顺序和类型的选择

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Time series modeling is a parametric solution for spectral analysis. If a time series of N observations is given, it is possible to select automatically the type and order of a time series model. That selected model is an adequate representation of the statistically significant spectral details in the observed process. If N is very large, reduced statistics estimators, computed from much less than N characteristics of the data are computationally attractive. The reduced statistics information can consist either of a number of covariance estimates or of a long AR (autoregressive) model. Estimated ARMA (autoregressive moving average) models, however, can have a poor statistical accuracy. A first improvement is found by defining the best dimension for the reduced statistic to be used in the actual computations. The accuracy is also improved by using four different types of initial ARMA estimates. Afterwards, it is possible to select automatically which initial estimates were most favorable in the present case. The fit of estimated models to a very long autoregressive model is used for the selection of the type of initial ARMA estimates. The same principle is used to select the best model type, AR, MA or ARMA and the best model order.
机译:时间序列建模是频谱分析的参数化解决方案。如果给出了N个观测值的时间序列,则可以自动选择时间序列模型的类型和顺序。所选模型可以很好地表示观察到的过程中具有统计意义的光谱细节。如果N很大,则根据远小于N个数据特征计算出的统计量估计量减少,在计算上会很有吸引力。减少的统计信息可以由多个协方差估计值或长AR(自回归)模型组成。但是,估计的ARMA(自回归移动平均线)模型的统计准确性可能会很差。通过为在实际计算中使用的简化统计量定义最佳维度,可以找到第一个改进。通过使用四种不同类型的初始ARMA估计,还可以提高准确性。此后,可以自动选择当前情况下最适合的初始估算值。估计模型与非常长的自回归模型的拟合用于选择初始ARMA估计的类型。使用相同的原理来选择最佳模型类型,AR,MA或ARMA以及最佳模型顺序。

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