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Quantitative approximations of evolving probability measures and sequential Markov chain Monte Carlo methods

机译:演化概率测度和顺序马尔可夫链蒙特卡罗方法的定量近似

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摘要

We study approximations of evolving probability measures by an interacting particle system. The particle system dynamics is a combination of independent Markov chain moves and importance sampling/resampling steps. Under global regularity conditions, we derive non-asymptotic error bounds for the particle system approximation. In a few simple examples, including high dimensional product measures, bounds with explicit constants of feasible size are obtained. Our main motivation are applications to sequential MCMC methods for Monte Carlo integral estimation.
机译:我们研究了一个相互作用的粒子系统的演化概率测度的近似值。粒子系统动力学是独立的马尔可夫链运动和重要性采样/重采样步骤的结合。在全局规则性条件下,我们导出粒子系统近似的非渐近误差范围。在包括高维乘积度量的几个简单示例中,获得了具有可行大小的显式常数的边界。我们的主要动机是应用于顺序MCMC方法进行蒙特卡洛积分估计。

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