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Bayesian computation: a summary of the current state, and samples backwards and forwards

机译:贝叶斯计算:当前状态的摘要,并向后和向前采样

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摘要

Recent decades have seen enormous improvements in computational inference for statistical models; there have been competitive continual enhancements in a wide range of computational tools. In Bayesian inference, first and foremost, MCMC techniques have continued to evolve, moving from random walk proposals to Langevin drift, to Hamiltonian Monte Carlo, and so on, with both theoretical and algorithmic innovations opening new opportunities to practitioners. However, this impressive evolution in capacity is confronted by an even steeper increase in the complexity of the datasets to be addressed. The difficulties of modelling and then handling ever more complex datasets most likely call for a new type of tool for computational inference that dramatically reduces the dimension and size of the raw data while capturing its essential aspects. Approximate models and algorithms may thus be at the core of the next computational revolution.
机译:最近几十年来,统计模型的计算推断有了巨大的进步。在广泛的计算工具中,竞争性的持续增强。在贝叶斯推理中,首先,最重要的是,MCMC技术不断发展,从随机游走方案到Langevin漂移,再到Hamiltonian Monte Carlo等,理论和算法创新都为从业者提供了新的机会。但是,容量的这种令人印象深刻的演变面临着要解决的数据集复杂性的急剧上升。建模以及随后处理越来越复杂的数据集的困难很可能需要一种新型的计算推理工具,该工具可以显着减小原始数据的尺寸和大小,同时捕获其基本方面。因此,近似模型和算法可能是下一次计算革命的核心。

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