We establish a sample path generation scheme in a unified manner for general multivariate infinitely divisible processes based on shot noise representation of their integrators. The approximation is derived from the decomposition of the infinitely divisible process to three independent components based on jump sizes and timings: the large jumps over a compact time interval, small jumps over the entire time interval and large jumps over an unbounded time interval. The first component is taken as the approximation and is much simpler than simulation of general Gaussian processes, while the latter two components are analyzed as the error. We derive technical conditions for the two error terms to vanish in the limit and for the scaled component on small jumps to converge to a Gaussian process so as to enhance the accuracy of the weak approximation. We provide an extensive collection of examples to highlight the wide practicality of the proposed approach.
翻译:我们以统一的方式为普通多变、无限分散的流程建立一个样本路径生成方案,其依据是其集成者射出的噪声表示。近似值源自于无穷尽的变异过程分解成三个基于跳跃大小和时间的独立的组件:一个紧凑时间间隔的大型跳跃、整个时间间隔的小型跳跃和无约束时间间隔的大型跳跃。第一个组件被作为近似值,比普通高山流程的模拟简单得多,而后两个组件则被分析为错误。我们为两个错误术语在限制中消失以及小跳跃的缩放组件与高山进程汇合提供了技术条件,以便提高虚弱的近距离的准确性。我们提供了大量实例,以突出拟议方法的广泛实用性。