It is often assumed that events cannot occur simultaneously when modelling data with point processes. This raises a problem as real-world data often contains synchronous observations due to aggregation or rounding, resulting from limitations on recording capabilities and the expense of storing high volumes of precise data. In order to gain a better understanding of the relationships between processes, we consider modelling the aggregated event data using multivariate Hawkes processes, which offer a description of mutually-exciting behaviour and have found wide applications in areas including seismology and finance. Here we generalise existing methodology on parameter estimation of univariate aggregated Hawkes processes to the multivariate case using a Monte Carlo Expectation Maximization (MC-EM) algorithm and through a simulation study illustrate that alternative approaches to this problem can be severely biased, with the multivariate MC-EM method outperforming them in terms of MSE in all considered cases.
翻译:通常假定,在用点进程模拟数据时,事件不能同时发生,这引起了一个问题,因为现实世界数据由于总合或四舍五入而往往包含同步观测,这是因为记录能力受到限制,储存大量精确数据的费用也很高。为了更好地了解各个进程之间的关系,我们考虑使用多变的霍克斯进程来模拟综合事件数据,这些进程可以描述相互刺激的行为,并在包括地震学和金融在内的领域发现广泛应用。我们在这里将现有的关于单流集成的霍克斯进程参数估计的方法,概括为使用蒙特卡洛预期最大化算法和模拟研究的多变量案例,说明解决这一问题的替代方法可能严重偏差,而多变式的MC-EM方法在所有已考虑的案件中都比多变的模型方法表现都好。