状态空间模型的块相关伪边际采样器

The Block-Correlated Pseudo Marginal Sampler for State Space Models

Journal of Business & Economic Statistics · 2024
被引 0
人大 AABS 4

中文导读

提出一种改进的伪边际Metropolis-Hastings方法,通过块采样、修剪均值、辅助扰动滤波器和高效排序算法,提升高维状态空间模型的贝叶斯推断效率,适用于非线性动态随机一般均衡模型等。

Abstract

Pseudo Marginal Metropolis-Hastings (PMMH) is a general approach to Bayesian inference when the likelihood is intractable, but can be estimated unbiasedly. Our article develops an efficient PMMH method that scales up better to higher dimensional state vectors than previous approaches. The improvement is achieved by the following innovations. First, a novel block version of PMMH that works with multiple particle filters is proposed. Second, the trimmed mean of the unbiased likelihood estimates of the multiple particle filters is used. Third, the article develops an efficient auxiliary disturbance particle filter, which is necessary when the bootstrap disturbance filter is inefficient, but the state transition density cannot be expressed in closed form. Fourth, a novel sorting algorithm, which is as effective as previous approaches but significantly faster than them, is developed to preserve the correlation between the logs of the likelihood estimates at the current and proposed parameter values. The performance of the sampler is investigated empirically by applying it to nonlinear Dynamic Stochastic General Equilibrium models with relatively high state dimensions and with intractable state transition densities and to multivariate GARCH diffusion-driven volatility in the mean models. Although we only apply the method to state space models, the approach will be useful in a wide range of applications such as large panel data models and stochastic differential equation models with mixed effects.

贝叶斯推断状态空间模型计量经济学粒子滤波马尔可夫链蒙特卡洛