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Modeling time series of count with excess zeros and ones based on INAR(1) model with zero-and-one inflated Poisson innovations

机译:基于零(1)型零充气泊松创新的INAR(1)模型的多余零和零型模型建模时间序列

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摘要

The first-order non-negative integer-valued autoregressive (INAR(1)) process has been applied to model the counts of events for a long time, and the Poisson model provides a standard and popular framework. However, this model may not be suitable for a data set with excess zeros and excess ones. We introduce a new stationary INAR(1) process with zero-and-one inflated Poisson (ZOIP) innovations. The proposed model is assumed to be a mixture of three separate data generation processes: one generates only zeros, one generates only ones, and the last one is a Poisson data-generating process. We present some structural properties such as the mean, variance, marginal and joint distribution functions of the process. We develop a method to test whether zero and one inflated under a Poisson INAR(1) model, which is based on dispersion index, zero index and one index. We also give the asymptotic distribution of the resulting test statistics under the null hypothesis of a Poisson INAR(1) model. Conditional maximum likelihood estimators are given, and the asymptotic properties of the estimators are established. In addition, the forecasting problem is addressed. Finally, a simulation study shows that the estimation method is accurate and reliable as long as the sample size is reasonably large. Two real data examples lead to superior performances of the proposed model compared with other competitive models in the literature. (C) 2018 Elsevier B.V. All rights reserved.
机译:一阶非负整数值的自回归(INAR(1))的过程已被应用到的事件的计数进行建模了很长时间,并且泊松模型提供了一个标准和流行的框架。然而,这种模式可能并不适合与过量的零和过量的人的数据集。我们引入一个新的静止INAR(1)用零和一过程充气泊松(ZOIP)的创新。该模型被假定为三个独立的数据生成过程的混合物:一个仅产生零,一个产生唯一的,和最后一个是泊松数据生成处理。我们提出了一些结构特性例如平均值,方差,和边缘联合分布的过程的功能。我们开发了一个方法,以测试是否零和一下泊松INAR(1)模型,该模型是基于分散指数,零指数和一个索引膨胀。我们也给所产生的测试统计的泊松INAR(1)模式的零假设下渐进分布。有条件的极大似然估计被给出,并且估计的渐近性成立。此外,预测问题解决。最后,模拟研究表明,估计方法是准确可靠的,只要样本量是相当大的。两个真实数据的例子导致与文献其他竞争车型相比,该模型的性能优越。 (c)2018年elestvier b.v.保留所有权利。

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