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Antithetic sampling for sequential Monte Carlo methods with application to state-space models

机译:用于序贯蒙特卡罗方法的抗动性取样,应用于状态空间模型

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In this paper, we cast the idea of antithetic sampling, widely used in standard Monte Carlo simulation, into the framework of sequential Monte Carlo methods. We propose a version of the standard auxiliary particle filter where the particles are mutated blockwise in such a way that all particles within each block are, first, offspring of a common ancestor and, second, negatively correlated conditionally on this ancestor. By deriving and examining the weak limit of a central limit theorem describing the convergence of the algorithm, we conclude that the asymptotic variance of the produced Monte Carlo estimates can be straightforwardly decreased by means of antithetic techniques when the particle filter is close to fully adapted, which involves approximation of the so-called optimal proposal kernel. As an illustration, we apply the method to optimal filtering in state-space models.
机译:在本文中,我们展示了抗静电采样的想法,广泛用于标准蒙特卡罗模拟,进入序贯蒙特卡罗方法的框架。 我们提出了一种标准辅助颗粒滤光片的版本,其中粒子以这样的方式突变,使得每个块内的所有粒子都是常见的祖先的后代,并且在这种祖先上有条件地呈负相关。 通过导出和检查描述算法收敛的中央极限定理的弱极限,我们得出结论,当颗粒滤波器接近完全适应时,通过近静电技术可以直接降低所产生的蒙特卡罗估计的渐近方差。 这涉及所谓的最佳提案内核的近似。 作为图示,我们将该方法应用于状态空间模型中的最佳滤波。

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