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Detection and estimation of additive outliers in seasonal time series

机译:季节性时间序列中添加性异常值的检测与估算

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The detection of outliers in a time series is an important issue because their presence may have serious negative effects on the analysis in many different ways. Moreover the presence of a complex seasonal pattern in the series could affect the properties of the usual outlier detection procedures. Therefore modelling the appropriate form of seasonality is a very important step when outliers are present in a seasonal time series. In this paper we present some procedures for detection and estimation of additive outliers when parametric seasonal models, in particular periodic autoregressive, are specified to fit the data. A simulation study is presented to evaluate the benefits and the drawbacks of the proposed procedure on a selection of seasonal time series. An application to three real time series is also examined.
机译:时间序列中的异常值的检测是一个重要问题,因为它们的存在可能对许多不同方式对分析产生严重的负面影响。 此外,该系列中存在复杂的季节性图案可能会影响通常的异常检测程序的性质。 因此,在季节性时间序列中存在异常值时,建模适当形式的季节性是一个非常重要的一步。 在本文中,我们在指定参数季节性模型,特别是定期自回归时,展示了一些检测和估算的程序,特别是定期自回归,以符合数据。 提出了一种仿真研究,以评估所提出的程序的效果和缺点在选择季节性时间序列中的选择。 还检查了三个实时序列的应用。

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