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Sequential Monte Carlo methods for static parameter estimation in random set models

机译:随机集模型中静态参数估计的顺序蒙特卡罗方法

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Bayesian inferencing for applications where the dimension of the parameter is also unknown requires modeling the parameter as an (ordered or unordered) random finite set. In most practical estimation problems, Monte Carlo methods is the standard tool. In particular the transdimensional Markov chain Monte Carlo (MCMC) method has been used to simulate from the posterior density of the random finite set. However the MCMC approach involves accessing the entire sequence of data for each iteration, and becomes computationally infeasible for massive data sets. This paper presents two sequential Monte Carlo strategies to reduce the number full accesses to the data. The first combines sequential importance sampling with MCMC to sequentially sample from the posterior. The second introduces artificial dynamics in the parameter to cast the problem as a Bayesian filtering problem so that particle techniques can be applied.
机译:贝叶斯介绍参数的维度也未知的应用,需要将参数建模为(有序或无序)随机有限集。在大多数实际估算问题中,蒙特卡罗方法是标准工具。特别地,跨多维标马尔可夫链蒙特卡罗(MCMC)方法已被用于模拟随机有限组的后密度。然而,MCMC方法涉及访问每次迭代的整个数据序列,并且对大规模数据集进行计算地不可行。本文介绍了两个顺序蒙特卡罗策略,以减少对数据的全部访问数。第一组合与MCMC的顺序重要性采样顺序地从后面进行样本。第二个在参数中介绍了人工动态,以将问题作为贝叶斯滤波问题施放,以便可以应用粒子技术。

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