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A One-Pass Sequential Monte Carlo Method for Bayesian Analysis of Massive Datasets

机译:用于海量数据集的贝叶斯分析的单程顺序蒙特卡罗方法

摘要

For Bayesian analysis of massive data, Markov chain Monte Carlo (MCMC) techniques often prove infeasible due to computational resource constraints. Standard MCMC methods generally require a complete scan of the dataset for each iteration. Ridgeway and Madigan (2002) and Chopin (2002b) recently presented importance sampling algorithms that combined simulations from a posterior distribution conditioned on a small portion of the dataset with a reweighting of those simulations to condition on the remainder of the dataset. While these algorithms drastically reduce the number of data accesses as compared to traditional MCMC, they still require substantially more than a single pass over the dataset. In this paper, we present "1PFS," an efficient, one-pass algorithm. The algorithm employs a simple modification of the Ridgeway and Madigan (2002) particle filtering algorithm that replaces the MCMC based "rejuvenation" step with a more efficient "shrinkage" kernel smoothing based step. To show proof-of-concept and to enable a direct comparison, we demonstrate 1PFS on the same examples presented in Ridgeway and Madigan (2002), namely a mixture model for Markov chains and Bayesian logistic regression. Our results indicate the proposed scheme delivers accurate parameter estimates while employing only a single pass through the data.
机译:对于海量数据的贝叶斯分析,由于计算资源的限制,通常证明马尔可夫链蒙特卡洛(MCMC)技术不可行。标准MCMC方法通常需要为每次迭代完整扫描数据集。 Ridgeway和Madigan(2002)和Chopin(2002b)最近提出了重要度采样算法,该算法结合了以数据集的一小部分为条件的后验分布的模拟,并将这些模拟的权重重新设置为以数据集的其余部分为条件。尽管与传统的MCMC相比,这些算法大大减少了数据访问的数量,但它们仍然需要对数据集进行一次以上的访问。在本文中,我们提出了一种有效的单遍算法“ 1PFS”。该算法采用了Ridgeway和Madigan(2002)粒子滤波算法的简单修改,该算法用更有效的“收缩”核平滑步骤代替了基于MCMC的“回春”步骤。为了显示概念证明并进行直接比较,我们在Ridgeway和Madigan(2002)提出的相同示例上演示了1PFS,即马尔可夫链和贝叶斯逻辑回归的混合模型。我们的结果表明,所提出的方案可提供准确的参数估计,同时仅使用一次数据访问。

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