Common information (CI) is ubiquitous in information theory and related areas such as theoretical computer science and discrete probability. However, because there are multiple notions of CI, a unified understanding of the deep interconnections between them is lacking. This monograph seeks to fill this gap by leveraging a small set of mathematical techniques that are applicable across seemingly disparate problems. In Part I, we review the operational tasks and properties associated with Wyner's and G\'acs-K\"orner-Witsenhausen's (GKW's) CI. In PartII, we discuss extensions of the former from the perspective of distributed source simulation. This includes the R\'enyi CI which forms a bridge between Wyner's CI and the exact CI. Via a surprising equivalence between the R\'enyi CI of order~$\infty$ and the exact CI, we demonstrate the existence of a joint source in which the exact CI strictly exceeds Wyner's CI. Other closely related topics discussed in Part II include the channel synthesis problem and the connection of Wyner's and exact CI to the nonnegative rank of matrices. In Part III, we examine GKW's CI with a more refined lens via the noise stability or NICD problem in which we quantify the agreement probability of extracted bits from a bivariate source. We then extend this to the $k$-user NICD and $q$-stability problems, and discuss various conjectures in information theory and discrete probability, such as the Courtade-Kumar, Li-M\'edard and Mossell-O'Donnell conjectures. Finally, we consider hypercontractivity and Brascamp-Lieb inequalities, which further generalize noise stability via replacing the Boolean functions therein by nonnnegative functions. The key ideas behind the proofs in Part III can be presented in a pedagogically coherent manner and unified via information-theoretic and Fourier-analytic methods.
翻译:常见信息 (CI) 在信息理论和相关领域( 如理论计算机科学 和离散概率 ), 常见信息( CI) 在信息理论和相关领域( 如理论计算机科学和离散概率 ) 都无处不在。 但是, 由于CI 存在多个概念, 我们从分布源模拟的角度来讨论前者的扩展。 其中包括 R\ eny CI, 它在Wyner 的CI 和确切的 CI 之间搭建桥梁。 这篇专著试图通过利用少量的数学技术来填补这一差距, 适用于看起来不同的问题。 在第一部分, 我们审查与Wyner 的运行任务和属性( G) 相关的属性和属性( G) 。 在第二部分, 我们讨论的频道合成问题, 以及Wyner 和 Centrical 的连接, 也就是通过 Nickal- dioqoloralalalal 的 Oralization 和 NIG 的定量 。