The sole aim of this book is to give a self-contained introduction to concepts and mathematical tools in Bayesian matrix decomposition in order to seamlessly introduce matrix decomposition techniques and their applications in subsequent sections. However, we clearly realize our inability to cover all the useful and interesting results concerning Bayesian matrix decomposition and given the paucity of scope to present this discussion, e.g., the separated analysis of variational inference for conducting the optimization. We refer the reader to literature in the field of Bayesian analysis for a more detailed introduction to the related fields. This book is primarily a summary of purpose, significance of important Bayesian matrix decomposition methods, e.g., real-valued decomposition, nonnegative matrix factorization, Bayesian interpolative decomposition, and the origin and complexity of the methods which shed light on their applications. The mathematical prerequisite is a first course in statistics and linear algebra. Other than this modest background, the development is self-contained, with rigorous proof provided throughout.
翻译:这本书的唯一目的是对巴伊西亚矩阵分解中的概念和数学工具进行自成一体的介绍,以便在随后各节中无缝地引入矩阵分解技术及其应用,然而,我们清楚地认识到,我们无法涵盖巴伊西亚矩阵分解的所有有用和有趣的结果,而且由于讨论的范围很小,例如,对进行优化的变异推论进行分别分析,我们请读者参考巴伊西亚分析领域的文献,以便更详细地介绍相关领域。本书主要总结了巴伊西亚重要矩阵分解方法的目的和意义,例如,实际估价的分解、非负面矩阵分解、巴伊西亚的混解,以及说明其应用的方法的起源和复杂性。数学的先决条件是统计学和线性代数方面的第一道课程。除了这一有限的背景外,发展是自成一体的,并且始终提供了严格的证据。