Flexible Lévy-Based Models for Time Series of Count Data with Zero-Inflation, Overdispersion, and Heavy Tails

IF 1 Q3 STATISTICS & PROBABILITY
Confort Kollie, Philip Ngare, B. Malenje
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引用次数: 0

Abstract

The explosion of time series count data with diverse characteristics and features in recent years has led to a proliferation of new analysis models and methods. Significant efforts have been devoted to achieving flexibility capable of handling complex dependence structures, capturing multiple distributional characteristics simultaneously, and addressing nonstationary patterns such as trends, seasonality, or change points. However, it remains a challenge when considering them in the context of long-range dependence. The Lévy-based modeling framework offers a promising tool to meet the requirements of modern data analysis. It enables the modeling of both short-range and long-range serial correlation structures by selecting the kernel set accordingly and accommodates various marginal distributions within the class of infinitely divisible laws. We propose an extension of the basic stationary framework to capture additional marginal properties, such as heavy-tailedness, in both short-term and long-term dependencies, as well as overdispersion and zero inflation in simultaneous modeling. Statistical inference is based on composite pairwise likelihood. The model’s flexibility is illustrated through applications to rainfall data in Guinea from 2008 to 2023, and the number of NSF funding awarded to academic institutions. The proposed model demonstrates remarkable flexibility and versatility, capable of simultaneously capturing overdispersion, zero inflation, and heavy-tailedness in count time series data.
零通胀、过度分散和重尾计数数据时间序列的灵活莱维模型
近年来,具有各种特征和特性的时间序列计数数据激增,导致新的分析模型和方法层出不穷。为了灵活处理复杂的依赖结构、同时捕捉多种分布特征以及处理非平稳模式(如趋势、季节性或变化点),人们付出了巨大的努力。然而,在考虑长程依赖性时,这仍然是一个挑战。基于莱维的建模框架为满足现代数据分析的要求提供了一个很有前景的工具。通过相应地选择核集,它可以对短程和长程序列相关结构进行建模,并在无限可分定律类中容纳各种边际分布。我们提出了基本静态框架的扩展,以捕捉短期和长期依赖关系中的额外边际属性,如重尾性,以及同步建模中的超分散和零膨胀。统计推断基于复合配对似然法。该模型的灵活性通过应用于几内亚 2008 年至 2023 年的降雨量数据以及学术机构获得的国家自然科学基金资助数量得到了说明。所提出的模型具有显著的灵活性和多功能性,能够同时捕捉计数时间序列数据中的超分散性、零膨胀性和重尾性。
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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来源期刊
Journal of Probability and Statistics
Journal of Probability and Statistics STATISTICS & PROBABILITY-
自引率
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发文量
14
审稿时长
18 weeks
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