顺序蒙特卡罗的元素

C. A. Naesseth, F. Lindsten, Thomas Bo Schön
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引用次数: 64

摘要

统计和概率机器学习的一个核心问题是计算概率分布和期望。这是贝叶斯统计和机器学习的基本问题,它将所有推理都构建为关于后验分布的期望。关键的挑战是接近这些棘手的期望。在本教程中,我们回顾了顺序蒙特卡罗(SMC),这是一种基于随机抽样的近似推理方法。首先,我们解释SMC的基础,讨论实际问题,并回顾理论成果。然后,我们检查两个主要的用户设计选择:提案分布和所谓的中间目标分布。我们回顾了最近关于如何使用变分推理和平摊来学习有效建议和目标分布的研究结果。接下来,我们讨论了归一化常数的SMC估计,如何将其用于伪边际推理和推理评估。在整个教程中,我们展示了SMC在机器学习中常用的各种模型上的使用,例如随机递归神经网络、概率图形模型和概率程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Elements of Sequential Monte Carlo
A core problem in statistics and probabilistic machine learning is to compute probability distributions and expectations. This is the fundamental problem of Bayesian statistics and machine learning, which frames all inference as expectations with respect to the posterior distribution. The key challenge is to approximate these intractable expectations. In this tutorial, we review sequential Monte Carlo (SMC), a random-sampling-based class of methods for approximate inference. First, we explain the basics of SMC, discuss practical issues, and review theoretical results. We then examine two of the main user design choices: the proposal distributions and the so called intermediate target distributions. We review recent results on how variational inference and amortization can be used to learn efficient proposals and target distributions. Next, we discuss the SMC estimate of the normalizing constant, how this can be used for pseudo-marginal inference and inference evaluation. Throughout the tutorial we illustrate the use of SMC on various models commonly used in machine learning, such as stochastic recurrent neural networks, probabilistic graphical models, and probabilistic programs.
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