Calibration of exponential Hawkes processes using a Modified Bionomic Algorithm

Jing Chen, S. Pierre
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Abstract

The aim of this research is to develop a fast and robust variant of the evolutionary heuristic Bionomic algorithm and assess its contribution to solving complex parametric estimation problems, in conjunction with other traditional optimization techniques. We introduce a modified version of the Bionomic Algorithm (MB), designed to efficiently compute the MLE of self-exciting exponential Hawkes processes with increasing dimensionality of the solution space. Performance tests, performed on simulated and historical S&P 500 financial data, show that the MB algorithm, with its solutions locally improved by either the standard Nelder Mead (NM) or Expectation Maximization (EM) algorithm, converges significantly faster and more frequently to a near-global solution than the NM or EM algorithms operating alone. These test results illustrate the robustness and computational efficiency of the MB algorithm, combined with traditional optimization methods, in the optimization of complex objective functions of high dimensionality.
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用改进的仿生算法校正指数Hawkes过程
本研究的目的是开发一种快速且鲁棒的进化启发式生物算法变体,并评估其与其他传统优化技术一起解决复杂参数估计问题的贡献。我们引入了一种改进版的仿生算法(Bionomic Algorithm, MB),旨在随着解空间维数的增加,有效地计算自激指数Hawkes过程的最大似然值。在模拟和历史标准普尔500指数财务数据上进行的性能测试表明,MB算法的解决方案通过标准的Nelder Mead (NM)或期望最大化(EM)算法进行局部改进,比单独运行的NM或EM算法更快、更频繁地收敛到近全局解决方案。这些测试结果说明了MB算法结合传统优化方法在高维复杂目标函数优化中的鲁棒性和计算效率。
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