{"title":"最大不可分割过程的精确模拟","authors":"Peng Zhong , Raphaël Huser , Thomas Opitz","doi":"10.1016/j.ecosta.2022.02.007","DOIUrl":null,"url":null,"abstract":"<div><p><span>Max-infinitely divisible (max-id) processes play a central role in extreme-value theory and include the subclass of all max-stable processes. They allow for a constructive representation based on the pointwise maximum of random functions drawn from a </span>Poisson point process<span><span> defined on a suitable function space. Simulating from a max-id process is often difficult due to its complex stochastic structure, while calculating its joint density in high dimensions is often numerically infeasible. Therefore, exact and efficient simulation techniques for max-id processes are useful tools for studying the characteristics of the process and for drawing </span>statistical inferences<span><span>. Inspired by the simulation algorithms for max-stable processes, theory and algorithms to generalize simulation approaches tailored for certain flexible (existing or new) classes of max-id processes are presented. Efficient simulation for a large class of models can be achieved by implementing an adaptive rejection sampling scheme to sidestep a numerical integration step in the algorithm. The results of a simulation study highlight that our simulation algorithm works as expected and is highly accurate and efficient, such that it clearly outperforms customary approximate sampling schemes. As a by-product, new max-id models, which can be represented as pointwise maxima of general location-scale mixtures and possess flexible tail </span>dependence structures capturing a wide range of asymptotic dependence scenarios, are also developed.</span></span></p></div>","PeriodicalId":54125,"journal":{"name":"Econometrics and Statistics","volume":"30 ","pages":"Pages 96-109"},"PeriodicalIF":2.0000,"publicationDate":"2024-04-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Exact Simulation of Max-Infinitely Divisible Processes\",\"authors\":\"Peng Zhong , Raphaël Huser , Thomas Opitz\",\"doi\":\"10.1016/j.ecosta.2022.02.007\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p><span>Max-infinitely divisible (max-id) processes play a central role in extreme-value theory and include the subclass of all max-stable processes. They allow for a constructive representation based on the pointwise maximum of random functions drawn from a </span>Poisson point process<span><span> defined on a suitable function space. Simulating from a max-id process is often difficult due to its complex stochastic structure, while calculating its joint density in high dimensions is often numerically infeasible. Therefore, exact and efficient simulation techniques for max-id processes are useful tools for studying the characteristics of the process and for drawing </span>statistical inferences<span><span>. Inspired by the simulation algorithms for max-stable processes, theory and algorithms to generalize simulation approaches tailored for certain flexible (existing or new) classes of max-id processes are presented. Efficient simulation for a large class of models can be achieved by implementing an adaptive rejection sampling scheme to sidestep a numerical integration step in the algorithm. The results of a simulation study highlight that our simulation algorithm works as expected and is highly accurate and efficient, such that it clearly outperforms customary approximate sampling schemes. 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引用次数: 0
摘要
最大无限可分(max-id)过程在极值理论中起着核心作用,包括所有最大稳定过程的子类。它们允许基于从定义在合适函数空间上的泊松点过程中抽取的随机函数的点最大值进行构造表示。由于 max-id 过程具有复杂的随机结构,因此通常很难对其进行模拟,而在高维度上计算其联合密度通常在数值上也不可行。因此,精确而高效的 max-id 过程仿真技术是研究过程特征和得出统计推论的有用工具。受最大稳定过程仿真算法的启发,本文提出了针对某些灵活的(现有的或新的)最大 ID 过程类别的通用仿真方法的理论和算法。通过实施自适应剔除采样方案,避开算法中的数值积分步骤,可以实现对一大类模型的高效模拟。仿真研究的结果表明,我们的仿真算法正如预期的那样有效、精确和高效,因此明显优于传统的近似采样方案。作为副产品,我们还开发了新的 max-id 模型,该模型可表示为一般位置尺度混合物的点状最大值,并具有灵活的尾部依赖结构,可捕捉各种渐近依赖情况。
Exact Simulation of Max-Infinitely Divisible Processes
Max-infinitely divisible (max-id) processes play a central role in extreme-value theory and include the subclass of all max-stable processes. They allow for a constructive representation based on the pointwise maximum of random functions drawn from a Poisson point process defined on a suitable function space. Simulating from a max-id process is often difficult due to its complex stochastic structure, while calculating its joint density in high dimensions is often numerically infeasible. Therefore, exact and efficient simulation techniques for max-id processes are useful tools for studying the characteristics of the process and for drawing statistical inferences. Inspired by the simulation algorithms for max-stable processes, theory and algorithms to generalize simulation approaches tailored for certain flexible (existing or new) classes of max-id processes are presented. Efficient simulation for a large class of models can be achieved by implementing an adaptive rejection sampling scheme to sidestep a numerical integration step in the algorithm. The results of a simulation study highlight that our simulation algorithm works as expected and is highly accurate and efficient, such that it clearly outperforms customary approximate sampling schemes. As a by-product, new max-id models, which can be represented as pointwise maxima of general location-scale mixtures and possess flexible tail dependence structures capturing a wide range of asymptotic dependence scenarios, are also developed.
期刊介绍:
Econometrics and Statistics is the official journal of the networks Computational and Financial Econometrics and Computational and Methodological Statistics. It publishes research papers in all aspects of econometrics and statistics and comprises of the two sections Part A: Econometrics and Part B: Statistics.