Aided by advances in neural density estimation, considerable progress has been made in recent years towards a suite of simulation-based inference (SBI) methods capable of performing flexible, black-box, approximate Bayesian inference for stochastic simulation models. While it has been demonstrated that neural SBI methods can provide accurate posterior approximations, the simulation studies establishing these results have considered only well-specified problems -- that is, where the model and the data generating process coincide exactly. However, the behaviour of such algorithms in the case of model misspecification has received little attention. In this work, we provide the first comprehensive study of the behaviour of neural SBI algorithms in the presence of various forms of model misspecification. We find that misspecification can have a profoundly deleterious effect on performance. Some mitigation strategies are explored, but no approach tested prevents failure in all cases. We conclude that new approaches are required to address model misspecification if neural SBI algorithms are to be relied upon to derive accurate scientific conclusions.
翻译:在神经密度估计进展的辅助下,近年来在一系列基于模拟的推论方法方面取得了相当大的进展,这些方法能够对随机模拟模型进行灵活、黑箱、近似巴伊西亚推论。虽然已经证明神经部推理方法能够提供准确的近距离近似值,但确定这些结果的模拟研究只考虑了非常具体的问题 -- -- 即模型和数据生成过程完全吻合的问题。然而,在模型分辨错误的情况下,这种算法的行为很少受到注意。在这项工作中,我们提供了对神经部推算法行为进行的首次全面研究,同时出现了各种形式的模型分辨错误。我们发现,误判可能对性能产生极为有害的影响。一些缓解战略得到了探讨,但没有任何经过测试的方法防止在所有情况下的失败。我们的结论是,如果依赖神经部履行机构的算法来得出准确的科学结论,则需要采用新的方法来解决模型分辨错误的问题。