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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Unbiased Smoothing using Particle Independent Metropolis-Hastings
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Unbiased Smoothing using Particle Independent Metropolis-Hastings

机译:使用独立于粒子的Metropolis-Hastings实现无偏平滑

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We consider the approximation of expectations with respect to the distribution of a latent Markov process given noisy measurements. This is known as the smoothing problem and is often approached with particle and Markov chain Monte Carlo (MCMC) methods. These methods provide consistent but biased estimators when run for a finite time. We propose a simple way of coupling two MCMC chains built using Particle Independent Metropolis-Hastings (PIMH) to produce unbiased smoothing estimators. Unbiased estimators are appealing in the context of parallel computing, and facilitate the construction of confidence intervals. The proposed scheme only requires access to off-the-shelf Particle Filters (PF) and is thus easier to implement than recently proposed unbiased smoothers. The approach is demonstrated on a Lévy-driven stochastic volatility model and a stochastic kinetic model.
机译:考虑到噪声测量,我们考虑期望值与潜在马尔可夫过程的分布的近似值。这被称为平滑问题,通常使用粒子和马尔可夫链蒙特卡罗(MCMC)方法来解决。当运行有限的时间时,这些方法提供了一致但有偏差的估计量。我们提出了一种简单的方法来耦合两个使用“独立于粒子的都会”(PIMH)构建的MCMC链,以产生无偏平滑估计量。无偏估计量在并行计算的环境中很有吸引力,并有助于构建置信区间。所提出的方案仅需要使用现成的粒子滤波器(PF),因此比最近提出的无偏平滑器更易于实现。该方法在Lévy驱动的随机波动率模型和随机动力学模型中得到了证明。

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