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Approximate Bayesian Computation by Subset Simulation for Parameter Inference of Dynamical Models

机译:用于动态模型参数推理的子集仿真近似贝叶斯计算

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A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recently appeared that combines the principles of Approximate Bayesian Computation (ABC) with the method of subset simulation for efficient rare-event simulation. ABC-SubSim adaptively creates a nested decreasing sequence of data-approximating regions in the output space. This sequence corresponds to increasingly closer approximations of the observed output vector in this output space. At each stage, the approximate likelihood function at a given value of the model parameter vector is defined as the probability that the predicted output corresponding to that parameter value falls in the current data-approximating region. If continued to the limit, the sequence of the data-approximating regions would converge on to the observed output vector and the approximate likelihood function would become exact, but this is not computationally feasible. At the heart of this paper is the interpretation of the resulting approximate likelihood function. We show that under the assumption of the existence of uniformly-distributed measurement errors, ABC gives exact Bayesian inference. Moreover, we present a new optimal proposal variance scaling strategy which enables ABC-SubSim to efficiently explore the posterior PDF. The algorithm is applied to the model updating of a two degree-of-freedom linear structure to illustrate its ability to handle model classes with various degrees of identifiability.
机译:一个新的多层次的马尔可夫链蒙特卡罗算法贝叶斯推理,ABC-SUBSIM,最近出现了结合近似贝叶斯计算(ABC)与子集模拟的高效稀有事件仿真方法的原理。 ABC-Submim自适应地创建输出空间中的数据近似区域的嵌套减少序列。该序列对应于该输出空间中观察到的输出矢量的越来越近的近似。在每个阶段,模型参数向量的给定值处的近似似然函数被定义为对应于该参数值的预测输出落入当前数据近似区域的概率。如果持续到极限,则数据近似区域的序列将收敛到观察到的输出矢量,并且近似似然函数将变得精确,但这不是计算可行的。在本文的核心,是对结果的近似似然函数的解释。我们表明,在假设存在均匀分布的测量误差的情况下,ABC提供了精确的贝叶斯推理。此外,我们提出了一种新的最佳提案方差缩放策略,使ABC-Subsim能够有效地探索后部PDF。该算法应用于两种自由度线性结构的模型更新,以说明其处理具有各种可识别性的模型类的能力。

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