Tensors, also known as multidimensional arrays, are useful data structures in machine learning and statistics. In recent years, Bayesian methods have emerged as a popular direction for analyzing tensor-valued data since they provide a convenient way to introduce sparsity into the model and conduct uncertainty quantification. In this article, we provide an overview of frequentist and Bayesian methods for solving tensor completion and regression problems, with a focus on Bayesian methods. We review common Bayesian tensor approaches including model formulation, prior assignment, posterior computation, and theoretical properties. We also discuss potential future directions in this field.
翻译:近年来,贝叶斯方法已成为分析高价数据的流行方向,因为这些方法为在模型中引入零散现象和进行不确定性量化提供了方便的方式。在本条中,我们概述了解决高价完成和回归问题的常客和巴耶斯方法,重点是巴耶斯方法。我们审视了贝耶斯的常见高价方法,包括模型拟订、先前分配、后方计算和理论属性。我们还讨论了该领域未来可能的方向。