Simulation-based inference (SBI) techniques are now an essential tool for the parameter estimation of mechanistic and simulatable models with intractable likelihoods. Statistical approaches to SBI such as approximate Bayesian computation and Bayesian synthetic likelihood have been well studied in the well specified and misspecified settings. However, most implementations are inefficient in that many model simulations are wasted. Neural approaches such as sequential neural likelihood (SNL) have been developed that exploit all model simulations to build a surrogate of the likelihood function. However, SNL approaches have been shown to perform poorly under model misspecification. In this paper, we develop a new method for SNL that is robust to model misspecification and can identify areas where the model is deficient. We demonstrate the usefulness of the new approach on several illustrative examples.
翻译:以模拟为基础的推论(SBI)技术现在已成为对机理和可模拟模型进行参数估计的基本工具,而且这种模型具有难以捉摸的可能性。对履行机构的统计方法,例如近似贝叶斯计算法和贝叶斯合成可能性等,已在非常具体和错误的环境下进行了很好的研究。然而,大多数执行效率低下的情况是,许多模型模拟被浪费了。诸如连续神经概率(SNL)等神经学方法已经开发,利用所有模型模拟来建立概率函数的替代。然而,SNL方法在模型的错误区分下表现不佳。在本文中,我们为SNL开发了一种新的方法,该方法非常有力,可以建模错误的特性,并可以确定模型有缺陷的领域。我们在若干示例中展示了新方法的有用性。