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Bayesian inference for diffusion processes: using higher-order approximations for transition densities

机译:贝叶斯推断扩散过程:使用高阶近似进行过渡密度

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Modelling random dynamical systems in continuous time, diffusion processes are a powerful tool in many areas of science. Model parameters can be estimated from time-discretely observed processes using Markov chain Monte Carlo (MCMC) methods that introduce auxiliary data. These methods typically approximate the transition densities of the process numerically, both for calculating the posterior densities and proposing auxiliary data. Here, the Euler–Maruyama scheme is the standard approximation technique. However, the MCMC method is computationally expensive. Using higher-order approximations may accelerate it, but the specific implementation and benefit remain unclear. Hence, we investigate the utilization and usefulness of higher-order approximations in the example of the Milstein scheme. Our study demonstrates that the MCMC methods based on the Milstein approximation yield good estimation results. However, they are computationally more expensive and can be applied to multidimensional processes only with impractical restrictions. Moreover, the combination of the Milstein approximation and the well-known modified bridge proposal introduces additional numerical challenges.
机译:在连续时间内建模随机动态系统,扩散过程是许多科学领域的强大工具。使用Markov链Monte Carlo(MCMC)方法可以从时间离散观察过程中估算模型参数,这些过程引入辅助数据。这些方法通常近似于数字地近似处理过程的过渡密度,用于计算后密度并提出辅助数据。在这里,欧拉 - 玛雅方案是标准近似技术。但是,MCMC方法是计算昂贵的。使用高阶近似可能会加速它,但具体的实施和益处仍然不清楚。因此,我们研究了Milstein计划的示例中的高阶近似的利用率和有用性。我们的研究表明,基于Milstein近似的MCMC方法产生良好的估计结果。然而,它们是计算方式更昂贵的并且可以仅应用于多维过程,仅具有不切实际的限制。此外,Milstein近似和众所周知的修改桥梁提案的组合引入了额外的数值挑战。

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