Modern data science applications often involve complex relational data with dynamic structures. An abrupt change in such dynamic relational data is typically observed in systems that undergo regime changes due to interventions. In such a case, we consider a factorized fusion shrinkage model in which all decomposed factors are dynamically shrunk towards group-wise fusion structures, where the shrinkage is obtained by applying global-local shrinkage priors to the successive differences of the row vectors of the factorized matrices. The proposed priors enjoy many favorable properties in comparison and clustering of the estimated dynamic latent factors. Comparing estimated latent factors involves both adjacent and long-term comparisons, with the time range of comparison considered as a variable. Under certain conditions, we demonstrate that the posterior distribution attains the minimax optimal rate up to logarithmic factors. In terms of computation, we present a structured mean-field variational inference framework that balances optimal posterior inference with computational scalability, exploiting both the dependence among components and across time. The framework can accommodate a wide variety of models, including dynamic matrix factorization, latent space models for networks and low-rank tensors. The effectiveness of our methodology is demonstrated through extensive simulations and real-world data analysis.
翻译:现代数据科学应用往往涉及具有动态结构的复杂关系数据。这种动态关系数据突变通常在因干预而发生制度变化的系统中观测到。在这种情况下,我们认为一种因子化的聚变缩缩缩模型,所有分解因素都以动态方式向群状融合结构缩缩缩,在采用全球-地方缩缩缩之前,通过对因子化矩阵的行矢量的连续差异进行全球-地方缩缩缩缩,从而获得缩缩缩缩。提议的先质在比较和组合估计动态潜在因素时享有许多有利的属性。比较估计潜在因素涉及相邻和长期的比较,而将时间范围视为变量。在某些条件下,我们证明后部或后部分布达到微缩最大最佳速度,达到对数因素的对数。在计算中,我们提出了一个结构化的中平均场变异性框架,将最佳后部推力与计算可变性推力相平衡,同时利用各组成部分之间的依赖性和跨时间的组合。框架可以容纳多种模型,包括动态矩阵化、潜伏空间模型,以及我们所展示的网络和低层数据模拟方法。