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Particle efficient importance sampling

机译:粒子有效重要性抽样

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摘要

The efficient importance sampling (EIS) method is a general principle for the numerical evaluation of high-dimensional integrals that uses the sequential structure of target integrands to build variance minimising importance samplers. Despite a number of successful applications in high dimensions, it is well known that importance sampling strategies are subject to an exponential growth in variance as the dimension of the integration increases. We solve this problem by recognising that the EIS framework has an offline sequential Monte Carlo interpretation. The particle EIS method is based on non-standard resampling weights that take into account the construction of the importance sampler as a sequential approximation to the state smoothing density. We apply the method for a range of univariate and bivariate stochastic volatility specifications, We also develop a new application of the EIS approach to state space models with Student's t state innovations. Our results show that the particle EIS method strongly outperforms both the standard EIS method and particle filters for likelihood evaluation in high dimensions. We illustrate the efficiency of the method for Bayesian inference using the particle marginal Metropolis-Hastings and importance sampling squared algorithms. (C) 2015 Elsevier B.V. All rights reserved.
机译:有效重要性抽样(EIS)方法是对高维积分进行数值评估的一般原理,该方法使用目标被积分体的顺序结构来构建方差最小化重要性采样器。尽管在高维领域有许多成功的应用,众所周知,随着集成维数的增加,重要性抽样策略的方差呈指数增长。我们通过认识到EIS框架具有离线顺序蒙特卡洛解释来解决此问题。粒子EIS方法基于非标准重采样权重,该权重考虑了作为状态平滑密度的顺序近似值的重要性采样器的构造。我们将该方法应用于一系列单变量和双变量随机波动率指标,我们还利用学生的t态创新开发了EIS方法在状态空间模型中的新应用。我们的结果表明,对于高维似然评估,粒子EIS方法大大优于标准EIS方法和粒子滤波器。我们说明了使用粒子边缘Metropolis-Hastings和重要性抽样平方算法进行贝叶斯推理的方法的效率。 (C)2015 Elsevier B.V.保留所有权利。

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