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Accelerating Monte Carlo methods for Bayesian inference in dynamical models

机译:动力学模型中贝叶斯推理的加速蒙特卡洛方法

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摘要

Making decisions and predictions from noisy observations are two important and challenging problems in many areas of society. Some examples of applications are recommendation systems for online shopping and streaming services, connecting genes with certain diseases and modelling climate change. In this thesis, we make use of Bayesian statistics to construct probabilistic models given prior information and historical data, which can be used for decision support and predictions. The main obstacle with this approach is that it often results in mathematical problems lacking analytical solutions. To cope with this, we make use of statistical simulation algorithms known as Monte Carlo methods to approximate the intractable solution. These methods enjoy well-understood statistical properties but are often computational prohibitive to employ. The main contribution of this thesis is the exploration of different strategies for accelerating inference methods based on sequential Monte Carlo (SMC) and Markov chain Monte Carlo (MCMC). That is, strategies for reducing the computational effort while keeping or improving the accuracy. A major part of the thesis is devoted to proposing such strategies for the MCMC method known as the particle Metropolis-Hastings (PMH) algorithm. We investigate two strategies: (i) introducing estimates of the gradient and Hessian of the target to better tailor the algorithm to the problem and (ii) introducing a positive correlation between the point-wise estimates of the target. Furthermore, we propose an algorithm based on the combination of SMC and Gaussian process optimisation, which can provide reasonable estimates of the posterior but with a significant decrease in computational effort compared with PMH. Moreover, we explore the use of sparseness priors for approximate inference in over-parametrised mixed effects models and autoregressive processes. This can potentially be a practical strategy for inference in the big data era. Finally, we propose a general method for increasing the accuracy of the parameter estimates in non-linear state space models by applying a designed input signal.
机译:从嘈杂的观察中做出决策和预测是社会许多领域中两个重要且具有挑战性的问题。应用程序的一些示例是用于在线购物和流媒体服务的推荐系统,该系统将基因与某些疾病联系起来并模拟气候变化。在本文中,我们利用贝叶斯统计数据来构造具有先验信息和历史数据的概率模型,这些模型可用于决策支持和预测。这种方法的主要障碍是,它常常导致数学问题缺乏解析解。为了解决这个问题,我们利用称为蒙特卡洛方法的统计模拟算法来近似难解。这些方法具有很好理解的统计属性,但通常在计算上难以使用。本文的主要贡献是探索了基于顺序蒙特卡洛(SMC)和马尔可夫链蒙特卡洛(MCMC)的各种加速推理方法的策略。即,在保持或提高精度的同时减少计算量的策略。本文的主要部分致力于为MCMC方法提出这样的策略,这种方法被称为粒子都市-停顿(PMH)算法。我们研究了两种策略:(i)引入目标的梯度和Hessian估计,以更好地针对该问题调整算法,以及(ii)在目标的逐点估计之间引入正相关。此外,我们提出了一种基于SMC和高斯过程优化相结合的算法,该算法可以提供合理的后验估计,但与PMH相比,计算量大为减少。此外,我们探索了稀疏先验在过度参数化混合效应模型和自回归过程中的近似推断。在大数据时代,这可能是一种可行的推理策略。最后,我们提出了一种通用方法,通过应用设计的输入信号来提高非线性状态空间模型中参数估计的准确性。

著录项

  • 作者

    Dahlin, Johan;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 入库时间 2022-08-20 20:22:47

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