基于仿真推理的贝叶斯模型比较

A Spurio Mancini, M M Docherty, M A Price, J D McEwen
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引用次数: 5

摘要

比较合适的模型来描述观测数据是科学的一项基本任务。贝叶斯模型证据,或边际似然,是一个计算上具有挑战性,但又至关重要的估计量,以进行贝叶斯模型比较。我们介绍了一种在基于模拟的推理(SBI)场景(也称为无似然推理)中计算贝叶斯模型证据的方法。特别是,我们利用最近提出的学习调和平均估计器,并利用它与用于生成后验样本的方法解耦的事实,即它只需要后验样本,这可以通过任何方法生成。这种灵活性是许多计算模型证据的替代方法所缺乏的,它使我们能够为三种主要的神经密度估计方法开发SBI模型比较技术,包括神经后验估计(NPE)、神经似然估计(NLE)和神经比率估计(NRE)。我们在一系列推理问题上演示并验证了我们的SBI证据计算技术,包括一个引力波例子。此外,我们进一步验证了在谐波软件中实现的学习调和均值估计器在基于似然设置下的准确性。这些结果突出了谐波作为一种采样不可知方法在基于似然和基于模拟的情景中估计模型证据的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian model comparison for simulation-based inference
Abstract Comparison of appropriate models to describe observational data is a fundamental task of science. The Bayesian model evidence, or marginal likelihood, is a computationally challenging, yet crucial, quantity to estimate to perform Bayesian model comparison. We introduce a methodology to compute the Bayesian model evidence in simulation-based inference (SBI) scenarios (also often called likelihood-free inference). In particular, we leverage the recently proposed learned harmonic mean estimator and exploit the fact that it is decoupled from the method used to generate posterior samples, i.e. it requires posterior samples only, which may be generated by any approach. This flexibility, which is lacking in many alternative methods for computing the model evidence, allows us to develop SBI model comparison techniques for the three main neural density estimation approaches, including neural posterior estimation (NPE), neural likelihood estimation (NLE), and neural ratio estimation (NRE). We demonstrate and validate our SBI evidence calculation techniques on a range of inference problems, including a gravitational wave example. Moreover, we further validate the accuracy of the learned harmonic mean estimator, implemented in the harmonic software, in likelihood-based settings. These results highlight the potential of harmonic as a sampler-agnostic method to estimate the model evidence in both likelihood-based and simulation-based scenarios.
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