For many decades now, Bayesian Model Averaging (BMA) has been a popular framework to systematically account for model uncertainty that arises in situations when multiple competing models are available to describe the same or similar physical process. The implementation of this framework, however, comes with multitude of practical challenges including posterior approximation via Markov Chain Monte Carlo and numerical integration. We present a Variational Bayes Inference approach to BMA as a viable alternative to the standard solutions which avoids many of the aforementioned pitfalls. The proposed method is 'black box' in the sense that it can be readily applied to many models with little to no model-specific derivation. We illustrate the utility of our variational approach on a suite of standard examples and discuss all the necessary implementation details. Fully documented Python code with all the examples is provided as well.
翻译:数十年来,贝叶西亚模式挥动(BMA)一直是一个受欢迎的框架,可以系统地说明在多种相互竞争的模式可以描述相同或类似的物理过程的情况下出现的模型不确定性。然而,这一框架的实施面临许多实际挑战,包括通过Markov 链条蒙特卡洛和数字集成的后向近似,我们对BMA提出了一种变式的贝叶导引法,作为避免上述许多陷阱的标准解决方案的可行替代方案。拟议的方法是“黑盒”,因为它可以很容易地适用于许多模型,很少甚至没有具体模型的衍生物。我们举例说明了我们对一套标准范例的变式方法的效用,并讨论了所有必要的实施细节。我们还提供了附有所有实例的完整记录的Python代码。