Probabilistic (Bayesian) modeling has experienced a surge of applications in almost all quantitative sciences and industrial areas. This development is driven by a combination of several factors, including better probabilistic estimation algorithms, flexible software, increased computing power, and a growing awareness of the benefits of probabilistic learning. However, a principled Bayesian model building workflow is far from complete and many challenges remain. To aid future research and applications of a principled Bayesian workflow, we ask and provide answers for what we perceive as two fundamental questions of Bayesian modeling, namely (a) ``What actually \emph{is} a Bayesian model?'' and (b) ``What makes a \emph{good} Bayesian model?''. As an answer to the first question, we propose the PAD model taxonomy that defines four basic kinds of Bayesian models, each representing some combination of the assumed joint distribution of all (known or unknown) variables (P), a posterior approximator (A), and training data (D). As an answer to the second question, we propose ten utility dimensions according to which we can evaluate Bayesian models holistically, namely, (1) causal consistency, (2) parameter recoverability, (3) predictive performance, (4) fairness, (5) structural faithfulness, (6) parsimony, (7) interpretability, (8) convergence, (9) estimation speed, and (10) robustness. Further, we propose two example utility decision trees that describe hierarchies and trade-offs between utilities depending on the inferential goals that drive model building and testing.
翻译:概率模型(Bayesian)在几乎所有的定量科学和工业领域都经历了大量应用。这一发展是由若干因素的结合推动的,包括更好的概率估算算法、灵活的软件、更高的计算能力,以及日益认识到概率学习的好处。然而,有原则的巴耶斯模型建设工作流程远非完全,许多挑战依然存在。为了帮助未来研究和运用有原则的巴伊西亚工作流程,我们要求并提供答案,以回答我们所认为的巴伊西亚模型的两个基本问题,即:(a)“什么实际上是贝伊西亚模型?”和(b)“什么使Bayesian模型产生更好的概率估算算法、灵活软件、增加计算能力,以及日益认识到概率学习的好处。作为第一个问题的答案,我们提出了界定巴伊西亚模型的四种基本类型的模型分类学,每一种都代表了所有(已知或未知的)变量的假设联合分布(P)、一个后方计算器(A),以及培训数据(D),关于精确性模型的模型、精确性(D)和精确性(Bay ) 解释,我们提出了结构的精确性(violuality) 测试,我们可以进一步评估。