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Modelling of low count heavy tailed time series data consisting large number of zeros and ones

机译:包含大量零和一的低计数重尾时间序列数据的建模

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摘要

In this paper, we construct a new mixture of geometric INAR(1) process for modeling over-dispersed count time series data, in particular data consisting of large number of zeros and ones. For some real data sets, the existing INAR(1) processes do not fit well, e.g., the geometric INAR(1) process overestimates the number of zero observations and underestimates the one observations, whereas Poisson INAR(1) process underestimates the zero observations and overestimates the one observations. Furthermore, for heavy tails, the PINAR(1) process performs poorly in the tail part. The existing zero-inflated Poisson INAR(1) and compound Poisson INAR(1) processes have the same kind of limitations. In order to remove this problem of under-fitting at one point and over-fitting at others points, we add some extra probability at one in the geometric INAR(1) process and build a new mixture of geometric INAR(1) process. Surprisingly, for some real data sets, it removes the problem of under and over-fitting over all the observations up to a significant extent. We then study the stationarity and ergodicity of the proposed process. Different methods of parameter estimation, namely the Yule-Walker and the quasi-maximum likelihood estimation procedures are discussed and illustrated using some simulation experiments. Furthermore, we discuss the future prediction along with some different forecasting accuracy measures. Two real data sets are analyzed to illustrate the effective use of the proposed model.
机译:在本文中,我们构造了一种新的几何INAR(1)混合过程,用于建模过度分散的计数时间序列数据,特别是由大量零和一组成的数据。对于某些真实数据集,现有的INAR(1)过程不太适合,例如,几何INAR(1)过程高估了零个观测值的数量,并低估了一个观测值,而Poisson INAR(1)过程低估了零个观测值的数量并高估了一个观察值。此外,对于较重的尾巴,PINAR(1)过程在尾巴部分的性能较差。现有的零膨胀Poisson INAR(1)和复合Poisson INAR(1)过程具有相同的局限性。为了消除这一问题,在一个点上拟合不足,而在其他点上拟合过度,我们在几何INAR(1)过程中的一个处增加了一些额外的概率,并构建了几何INAR(1)过程的新混合。出乎意料的是,对于某些真实数据集,它在很大程度上消除了所有观测值不足和过度拟合的问题。然后,我们研究所提出过程的平稳性和遍历性。使用一些模拟实验,讨论并说明了参数估计的不同方法,即Yule-Walker方法和准最大似然估计方法。此外,我们讨论了未来的预测以及一些不同的预测准确性度量。分析了两个实际数据集,以说明所提出模型的有效使用。

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