Online Drift Estimation for Jump-Diffusion Processes

Theerawat Bhudisaksang, Á. Cartea
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引用次数: 11

Abstract

We show the convergence of an online stochastic gradient descent estimator to obtain the drift parameter of a continuous-time jump-diffusion process. The stochastic gradient descent follows a stochastic path in the gradient direction of a function to find a minimum, which in our case determines the estimate of the unknown drift parameter. We decompose the deviation of the stochastic descent direction from the deterministic descent direction into four terms: the weak solution of the non-local Poisson equation, a Riemann integral, a stochastic integral, and a covariation term. This decomposition is employed to prove the convergence of the online estimator and we use simulations to illustrate the performance of the online estimator.
跃变扩散过程的在线漂移估计
我们证明了一个在线随机梯度下降估计器的收敛性,以获得连续时间跳扩散过程的漂移参数。随机梯度下降沿着函数梯度方向的随机路径寻找最小值,在我们的例子中,这决定了未知漂移参数的估计。我们将随机下降方向与确定性下降方向的偏差分解为四项:非局部泊松方程的弱解、黎曼积分、随机积分和协变项。利用这种分解证明了在线估计器的收敛性,并用仿真说明了在线估计器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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