Liu Mengya, Zhu Fukang, Li Jianfeng, Sun Chuning
School of Mathematics and Statistics, Central China Normal University, Wuhan 430079, China.
School of Mathematics, Jilin University, Changchun 130012, China.
Entropy (Basel). 2023 Jun 11;25(6):922. doi: 10.3390/e25060922.
Count time series are widely available in fields such as epidemiology, finance, meteorology, and sports, and thus there is a growing demand for both methodological and application-oriented research on such data. This paper reviews recent developments in integer-valued generalized autoregressive conditional heteroscedasticity (INGARCH) models over the past five years, focusing on data types including unbounded non-negative counts, bounded non-negative counts, Z-valued time series and multivariate counts. For each type of data, our review follows the three main lines of model innovation, methodological development, and expansion of application areas. We attempt to summarize the recent methodological developments of INGARCH models for each data type for the integration of the whole INGARCH modeling field and suggest some potential research topics.
计数时间序列在流行病学、金融、气象学和体育等领域广泛存在,因此对于此类数据的方法研究和应用导向研究的需求日益增长。本文回顾了过去五年整数取值广义自回归条件异方差(INGARCH)模型的最新进展,重点关注包括无界非负计数、有界非负计数、Z值时间序列和多元计数在内的数据类型。对于每种数据类型,我们的综述沿着模型创新、方法发展和应用领域扩展这三条主线展开。我们试图总结每种数据类型的INGARCH模型的近期方法发展,以整合整个INGARCH建模领域,并提出一些潜在的研究课题。