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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Unbiased Inference for Discretely Observed Hidden Markov Model Diffusions
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Unbiased Inference for Discretely Observed Hidden Markov Model Diffusions

机译:无偏推理为离散观察隐藏马尔可夫模型扩散

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摘要

We develop a Bayesian inference method for diffusions observed discretely and with noise, which is free of discretization bias. Unlike existing unbiased inference methods, our method does not rely on exact simulation techniques. Instead, our method uses standard time-discretized approximations of diffusions, such as the Euler--Maruyama scheme. Our approach is based on particle marginal Metropolis--Hastings, a particle filter, randomized multilevel Monte Carlo, and an importance sampling type correction of approximate Markov chain Monte Carlo. The resulting estimator leads to inference without a bias from the time-discretization as the number of Markov chain iterations increases. We give convergence results and recommend allocations for algorithm inputs. Our method admits a straightforward parallelization and can be computationally efficient. The user-friendly approach is illustrated on three examples, where the underlying diffusion is an Ornstein--Uhlenbeck process, a geometric Brownian motion, and a 2d nonreversible Langevin equation.
机译:我们开发一个贝叶斯推理方法扩散观察离散和噪音,免费的离散化的偏见。现有的推理方法,我们的方法不依赖于精确的仿真技术。相反,我们的方法使用标准time-discretized扩散近似,如欧拉- Maruyama方案。基于粒子边际大都市,黑斯廷斯,粒子滤波,随机的多级蒙特卡罗和一个重要性抽样类型修正近似的马尔可夫链蒙特卡洛。得到的估计量导致推理没有偏见的time-discretization数量马尔可夫链的迭代增加。收敛结果和推荐配置算法的输入。简单的并行化,可以计算效率。方法是在三个例子说明,底层的扩散是一个奥恩斯坦-乌伦贝克的过程,一个几何布朗运动,和一个2 d不可逆的朗之万方程。

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