This paper introduces a Nearly Unstable INteger-valued AutoRegressive Conditional Heteroskedasticity (NU-INARCH) process for dealing with count time series data. It is proved that a proper normalization of the NU-INARCH process endowed with a Skorohod topology weakly converges to a Cox-Ingersoll-Ross diffusion. The asymptotic distribution of the conditional least squares estimator of the correlation parameter is established as a functional of certain stochastic integrals. Numerical experiments based on Monte Carlo simulations are provided to verify the behavior of the asymptotic distribution under finite samples. These simulations reveal that the nearly unstable approach provides satisfactory and better results than those based on the stationarity assumption even when the true process is not that close to non-stationarity. A unit root test is proposed and its Type-I error and power are examined via Monte Carlo simulations. As an illustration, the proposed methodology is applied to the daily number of deaths due to COVID-19 in the United Kingdom.
翻译:本文介绍了处理计时序列数据的近乎无法预测的内值自动递减条件性热度进程(NU-INARCHH),证明具有Skorohod表层学的NU-INARCH过程的正常化进程微弱地与Cox-Ingersoll-Ross扩散相融合。相关参数的有条件最低方位估计值的无症状分布被确定为某些随机集成体的功能。基于蒙特卡洛模拟的量化实验被提供,以核实在有限样品下无症状分布的行为。这些模拟表明,几乎不稳定的方法所提供的结果比基于静止性假设的结果令人满意和更好,即使真实过程不接近于不常态。提出了单位根测试,并通过蒙特卡洛模拟审查了其类型I误差和功率。例如,拟议的方法适用于联合王国COVID-19的每日死亡人数。