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Bayesian inference with reliability methods without knowing the maximum of the likelihood function

机译:在不知道似然函数最大值的情况下使用可靠性方法进行贝叶斯推理

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摘要

In the BUS (Bayesian Updating with Structural reliability methods) approach, the uncertain parameter space is augmented by a uniform random variable and the Bayesian inference problem is interpreted as a structural reliability problem. A posterior sample is given by an augmented vector sample within the failure domain of the structural reliability problem where the realization of the uniform random variable is smaller than the likelihood function scaled by a constant c. The constant c must be selected such that 1/c is larger or equal than the maximum of the likelihood function, which, however, is typically unknown a-priori. For BUS combined with sampling based reliability methods, choosing c too small has a negative impact on the computational efficiency. To overcome the problem of selecting c, we propose a post-processing step for BUS that returns an unbiased estimate for the evidence and samples from the posterior distribution, even if 1/c is selected smaller than the maximum of the likelihood function. The applicability of the proposed post-processing step is demonstrated by means of rejection sampling. However, it can be combined with any structural reliability method applied within the BUS framework.
机译:在BUS(使用结构可靠性方法进行贝叶斯更新)方法中,不确定参数空间由统一随机变量增加,并且贝叶斯推断问题被解释为结构可靠性问题。后验样本由结构可靠性问题的失效域内的增强矢量样本给出,其中均匀随机变量的实现小于按常数c缩放的似然函数。必须选择常数c,以使1 / c大于或等于似然函数的最大值,但是,这通常是未知的先验值。对于BUS与基于采样的可靠性方法相结合,选择c太小会对计算效率产生负面影响。为了克服选择c的问题,我们提出了BUS的后处理步骤,即使选择的1 / c小于似然函数的最大值,它也从后验分布中返回证据和样本的无偏估计。拟议的后处理步骤的适用性通过剔除采样得到证明。但是,它可以与BUS框架中应用的任何结构可靠性方法结合使用。

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