The behaviour of statistical relational representations across differently sized domains has become a focal area of research from both a modelling and a complexity viewpoint. In 2018, Jaeger and Schulte suggested projectivity of a family of distributions as a key property, ensuring that marginal inference is independent of the domain size. However, Jaeger and Schulte assume that the domain is characterised only by its size. This contribution extends the notion of projectivity from families of distributions indexed by domain size to functors taking extensional data from a database. This makes projectivity available for the large range of applications taking structured input. We transfer the known attractive properties of projective families of distributions to the new setting. Furthermore, we prove a correspondence between projectivity and distributions on countably infinite domains, which we use to unify and generalise earlier work on statistical relational representations in infinite domains. Finally, we use the extended notion of projectivity to define a further strengthening, which we call $\sigma$-projectivity, and which allows the use of the same representation in different modes while retaining projectivity.
翻译:在2018年,Jaeger和Schulte从建模和复杂的角度提出了分配家庭作为关键财产的预测性,确保边际推推论独立于域大小。然而,Jaeger和Schulte认为,域的特征仅以其大小为特征。这一贡献扩大了按域大小指数的分布家庭对取自数据库的扩展数据的真菌学家的投影性概念。这为大量应用获得结构化投入提供了投影性。我们把分布的投影家庭的已知吸引力特性转移到新的环境。此外,我们证明,投影性与可计算无限域的分布之间是对应的,我们用来统一和概括关于无限域统计关系表述的早期工作。最后,我们利用扩大的投影性概念来界定进一步的加强,我们称之为$\sigma$-projective性,并允许在保持投影性的同时在不同的模式上使用同样的代表。