大时间序列集的令人尴尬的平行序列马尔可夫链蒙特卡罗

R. Casarin, Radu V. Craiu, F. Leisen
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引用次数: 5

摘要

贝叶斯计算关键依赖于马尔可夫链蒙特卡罗(MCMC)算法。在大量数据集的情况下,运行Metropolis-Hastings采样器从后验分布中提取数据变得令人望而却步,因为每次迭代都需要计算大量的似然项。为了对大时间序列集执行贝叶斯推理,我们考虑了一种算法,该算法结合了以前用于为大数据设计MCMC算法的“分而治之”思想和顺序MCMC策略。用一组大型财务数据说明了该方法的性能。
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Embarrassingly Parallel Sequential Markov-chain Monte Carlo for Large Sets of Time Series
Bayesian computation crucially relies on Markov chain Monte Carlo (MCMC) algorithms. In the case of massive data sets, running the Metropolis-Hastings sampler to draw from the posterior distribution becomes prohibitive due to the large number of likelihood terms that need to be calculated at each iteration. In order to perform Bayesian inference for a large set of time series, we consider an algorithm that combines 'divide and conquer" ideas previously used to design MCMC algorithms for big data with a sequential MCMC strategy. The performance of the method is illustrated using a large set of financial data.
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