A zero-modified geometric INAR(1) model for analyzing count time series with multiple features

Pub Date : 2023-04-04 DOI:10.1002/cjs.11774
Yao Kang, Fukang Zhu, Dehui Wang, Shuhui Wang
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引用次数: 0

Abstract

Zero inflation, zero deflation, overdispersion, and underdispersion are commonly encountered in count time series. To better describe these characteristics of counts, this article introduces a zero-modified geometric first-order integer-valued autoregressive (INAR(1)) model based on the generalized negative binomial thinning operator, which contains dependent zero-inflated geometric counting series. The new model contains the NGINAR(1) model, ZMGINAR(1) model, and GNBINAR(1) model with geometric marginals as special cases. Some statistical properties are studied, and estimates of the model parameters are derived by the Yule–Walker, conditional least squares, and maximum likelihood methods. Asymptotic properties and numerical results of the estimators are also studied. In addition, some test and forecasting problems are addressed. Three real-data examples are given to show the flexibility and practicability of the new model.

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一个零修正的几何INAR(1)模型用于分析具有多特征的计数时间序列
零膨胀、零紧缩、过度分散和分散不足是计数时间序列中经常遇到的问题。为了更好地描述计数的这些特征,本文介绍了基于广义负二叉稀疏算子的零修正几何一阶整数值自回归(INAR(1))模型,该模型包含依赖的零膨胀几何计数序列。新模型包含作为特例的 NGINAR(1) 模型、ZMGINAR(1) 模型和具有几何边际的 GNBINAR(1) 模型。研究了一些统计特性,并通过 Yule-Walker、条件最小二乘法和最大似然法得出了模型参数的估计值。还研究了估计值的渐近特性和数值结果。此外,还讨论了一些测试和预测问题。还给出了三个真实数据示例,以展示新模型的灵活性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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