While the choice of prior is one of the most critical parts of the Bayesian inference workflow, recent Bayesian deep learning models have often fallen back on uninformative priors, such as standard Gaussians. In this review, we highlight the importance of prior choices for Bayesian deep learning and present an overview of different priors that have been proposed for (deep) Gaussian processes, variational autoencoders, and Bayesian neural networks. We also outline different methods of learning priors for these models from data. We hope to motivate practitioners in Bayesian deep learning to think more carefully about the prior specification for their models and to provide them with some inspiration in this regard.
翻译:虽然选择先入为主是贝耶斯人推论工作流程中最关键的部分之一,但最近贝耶斯人的深层次学习模式往往落后于不提供信息的先入为主的先入为主的先入为主的先入为主,例如标准高斯人。在这次审查中,我们强调巴耶斯人先行选择先入为主的重要性,并概述为(深)高斯人进程、变式自动电解器和巴耶斯人神经网络提出的不同前入为主的先入为主。我们还从数据中概述了这些模型的不同学习前入的方法。我们希望鼓励巴耶斯人深层学习,更仔细地思考其模型的先入为主,并在这方面给予他们一些启发。