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Augmented pseudo-marginal Metropolis-Hastings for partially observed diffusion processes

机译:增强的伪边缘 Metropolis-Hastings,用于部分观测到的扩散过程

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摘要

We consider the problem of inference for nonlinear, multivariate diffusion processes, satisfying Ito stochastic differential equations (SDEs), using data at discrete times that may be incomplete and subject to measurement error. Our starting point is a state-of-the-art correlated pseudo-marginal Metropolis-Hastings algorithm, that uses correlated particle filters to induce strong and positive correlation between successive likelihood estimates. However, unless the measurement error or the dimension of the SDE is small, correlation can be eroded by the resampling steps in the particle filter. We therefore propose a novel augmentation scheme, that allows for conditioning on values of the latent process at the observation times, completely avoiding the need for resampling steps. We integrate over the uncertainty at the observation times with an additional Gibbs step. Connections between the resulting pseudo-marginal scheme and existing inference schemes for diffusion processes are made, giving a unified inference framework that encompasses Gibbs sampling and pseudo marginal schemes. The methodology is applied in three examples of increasing complexity. We find that our approach offers substantial increases in overall efficiency, compared to competing methods
机译:我们考虑了非线性、多变量扩散过程的推理问题,满足伊藤随机微分方程 (SDE),使用离散时间的数据,这些数据可能不完整且存在测量误差。我们的起点是最先进的相关伪边际 Metropolis-Hastings 算法,该算法使用相关粒子过滤器在连续似然估计之间诱导强正相关。然而,除非测量误差或SDE的尺寸很小,否则粒子过滤器中的重采样步骤可能会削弱相关性。因此,我们提出了一种新的增强方案,允许在观察时对潜在过程的值进行条件调节,完全避免了重采样步骤的需要。我们将观测时间的不确定性与额外的吉布斯步数进行积分。将得到的伪边际方案与现有的扩散过程推理方案联系起来,给出了一个包含吉布斯抽样和伪边际方案的统一推理框架。该方法应用于复杂性增加的三个示例中。我们发现,与竞争方法相比,我们的方法在整体效率方面提供了显着的提高

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