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The Hawkes process with renewal immigration & its estimation with an EM algorithm

机译:具有更新移民的Hawkes过程及其EM算法的估计

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In its original form, the self-excited Hawkes process is a cluster process where immigrants follow a Poisson process, and each immigrant may form a cluster of multi-generational offspring. The Hawkes process is generalized by replacing the Poisson immigration process with a renewal process. This generalization makes direct MLE impossible. Thus, two EM algorithms are introduced: The first extends the existing EM algorithm for the Hawkes process to consider renewal immigration. It treats the entire branching structure which points are immigrants, and which point is the parent of each offspring as missing data. The second algorithm reduces the amount of missing data, considering only if a point is an immigrant or not as missing data. This significantly reduces computational complexity and memory requirements, enabling estimation on larger datasets. Both algorithms are found to perform well in simulation studies. A case study shows that the Hawkes process with renewal immigration is superior to the standard Hawkes process for the modeling of high-frequency price fluctuations. Further, it is demonstrated that misspecification of the immigration process can bias estimation of the branching ratio, which quantifies the degree of self-excitation. (C) 2015 Elsevier B.V. All rights reserved.
机译:在其原始形式中,自激式霍克斯过程是一个集群过程,其中移民遵循泊松过程,每个移民都可以形成多代后代的集群。霍克斯程序通过将泊松移民程序替换为续签程序来概括。这种概括使得直接进行MLE是不可能的。因此,引入了两种EM算法:第一种扩展了适用于Hawkes流程的现有EM算法,以考虑续签移民。它将整个分支结构视为丢失的数据,其中哪些点是移民,哪些点是每个后代的父代。第二种算法减少了丢失数据的数量,仅将一个点视为移民还是不将其视为丢失数据。这显着降低了计算复杂性和内存要求,从而可以对较大的数据集进行估算。发现这两种算法在仿真研究中均表现良好。案例研究表明,在进行高频价格波动建模时,具有新移民的霍克斯过程优于标准霍克斯过程。进一步地,证明了迁移过程的错误指定可以使分支比的估计偏倚,这量化了自激程度。 (C)2015 Elsevier B.V.保留所有权利。

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