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The Gibbs sampler with particle efficient importance sampling for state-space models*

机译:具有状态空间模型的粒子有效重要性采样的Gibbs采样器*

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We consider Particle Gibbs (PG) for Bayesian analysis of non-linear non-Gaussian state-space models. As a Monte Carlo (MC) approximation of the Gibbs procedure, PG uses sequential MC (SMC) importance sampling inside the Gibbs to update the latent states. We propose to combine PG with the Particle Efficient Importance Sampling (PEIS). By using SMC sampling densities which are approximately globally fully adapted to the targeted density of the states, PEIS can substantially improve the simulation efficiency of the PG relative to existing PG implementations. The efficiency gains are illustrated in PG applications to a non-linear local-level model and stochastic volatility models.
机译:我们考虑将粒子吉布斯(PG)用于非线性非高斯状态空间模型的贝叶斯分析。作为吉布斯过程的蒙特卡洛(MC)近似,PG使用吉布斯内部的连续MC(SMC)重要度采样来更新潜在状态。我们建议将PG与粒子有效重要性采样(PEIS)结合起来。通过使用大约完全完全适应状态目标密度的SMC采样密度,PEIS可以相对于现有PG实现显着提高PG的仿真效率。 PG应用于非线性本地模型和随机波动率模型的效率提高得到了说明。

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