Bayesian methods in tensor analysis

IF 0.3 4区 数学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY Statistics and Its Interface Pub Date : 2024-02-01 DOI:10.4310/23-sii802
Shi Yiyao, Shen Weining
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Abstract

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.
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张量分析中的贝叶斯方法
张量,又称多维数组,是机器学习和统计学中非常有用的数据结构。近年来,贝叶斯方法成为分析张量值数据的一个流行方向,因为它们提供了一种方便的方法,可以将稀疏性引入模型并进行不确定性量化。在本文中,我们将概述解决张量补全和回归问题的频数主义和贝叶斯方法,并重点介绍贝叶斯方法。我们回顾了常见的贝叶斯张量方法,包括模型制定、先验分配、后验计算和理论属性。
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来源期刊
Statistics and Its Interface
Statistics and Its Interface MATHEMATICAL & COMPUTATIONAL BIOLOGY-MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
CiteScore
0.90
自引率
12.50%
发文量
45
审稿时长
6 months
期刊介绍: Exploring the interface between the field of statistics and other disciplines, including but not limited to: biomedical sciences, geosciences, computer sciences, engineering, and social and behavioral sciences. Publishes high-quality articles in broad areas of statistical science, emphasizing substantive problems, sound statistical models and methods, clear and efficient computational algorithms, and insightful discussions of the motivating problems.
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