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A nonparametric estimation procedure for the Hawkes process: comparison with maximum likelihood estimation

机译:霍克斯过程的非参数估计程序:与最大似然估计的比较

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摘要

In earlier work, Kirchner [An estimation procedure for the Hawkes process. Quant Financ. 2017;17(4):571-595], we introduced a nonparametric estimation method for the Hawkes point process. In this paper, we present a simulation study that compares this specific nonparametric method to maximum-likelihood estimation. We find that the standard deviations of both estimation methods decrease as power-laws in the sample size. Moreover, the standard deviations are proportional. For example, for a specific Hawkes model, the standard deviation of the branching coefficient estimate is roughly 20% larger than for MLE - over all sample sizes considered. This factor becomes smaller when the true underlying branching coefficient becomes larger. In terms of runtime, our method clearly outperforms MLE. The present bias of our method can be well explained and controlled. As an incidental finding, we see that also MLE estimates seem to be significantly biased when the underlying Hawkes model is near criticality. This asks for a more rigorous analysis of the Hawkes likelihood and its optimization.
机译:在更早的工作中,基尔希纳[霍克斯过程的估计程序。 Quant Financ。 2017; 17(4):571-595],我们为Hawkes点过程引入了一种非参数估计方法。在本文中,我们提出了一个仿真研究,将这种特定的非参数方法与最大似然估计进行了比较。我们发现,两种估计方法的标准差都随着样本量的幂律而减小。而且,标准偏差是成比例的。例如,对于特定的Hawkes模型,在考虑的所有样本量上,分支系数估计的标准偏差比MLE大约20%。当真正的基础分支系数变大时,该因子变小。在运行时方面,我们的方法明显优于MLE。我们方法的当前偏差可以很好地解释和控制。作为偶然发现,我们发现,当基本的Hawkes模型接近临界时,MLE估计也似乎有明显的偏差。这就要求对霍克斯可能性及其优化进行更严格的分析。

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