基于合成似然的稳健近似贝叶斯推断

Robust Approximate Bayesian Inference With Synthetic Likelihood

Journal of Computational and Graphical Statistics · 2021
被引 30
ABS 3

中文导读

针对贝叶斯合成似然法在模型误设定时推断不可靠的问题,提出一种能检测误设定并给出稳健推断的新方法,模拟和真实数据验证其优于标准方法。

Abstract

Bayesian synthetic likelihood (BSL) is now an established method for conducting approximate Bayesian inference in models where, due to the intractability of the likelihood function, exact Bayesian approaches are either infeasible or computationally too demanding. Implicit in the application of BSL is the assumption that the data-generating process (DGP) can produce simulated summary statistics that capture the behaviour of the observed summary statistics. We demonstrate that if this compatibility between the actual and assumed DGP is not satisfied, that is, if the model is misspecified, BSL can yield unreliable parameter inference. To circumvent this issue, we propose a new BSL approach that can detect the presence of model misspecification, and simultaneously deliver useful inferences even under significant model misspecification. Two simulated and two real data examples demonstrate the performance of this new approach to BSL, and document its superior accuracy over standard BSL when the assumed model is misspecified. Supplementary materials for this article are available online.

贝叶斯推断模型误设定合成似然稳健统计计算统计