In many applications, we encounter data on Riemannian manifolds such as torus and rotation groups. Standard statistical procedures for multivariate data are not applicable to such data. In this study, we develop goodness-of-fit testing and interpretable model criticism methods for general distributions on Riemannian manifolds, including those with an intractable normalization constant. The proposed methods are based on extensions of kernel Stein discrepancy, which are derived from Stein operators on Riemannian manifolds. We discuss the connections between the proposed tests with existing ones and provide a theoretical analysis of their asymptotic Bahadur efficiency. Simulation results and real data applications show the validity of the proposed methods.
翻译:在许多应用中,我们遇到关于Riemannian 方块的数据,如轮流和轮流组。多变数据的标准统计程序不适用于这些数据。在本研究中,我们为Riemannian 方块的一般分布,包括具有难解的正常化常数的方块,制定了完善的测试和可解释的典型批评方法。提议的方法基于内核斯坦质差异的延伸,这些差异来自Riemannian 方块上的斯坦因操作员。我们讨论了拟议测试与现有方块之间的联系,并对现有方块的无保护性巴哈杜尔效率进行了理论分析。模拟结果和真实数据应用显示了拟议方法的有效性。