Many real-world networks are theorized to have core-periphery structure consisting of a densely-connected core and a loosely-connected periphery. While this phenomenon has been extensively studied in a range of scientific disciplines, it has not received sufficient attention in the statistics community. In this expository article, our goal is to raise awareness about this topic and encourage statisticians to address the many open inference problems in this area. To this end, we first summarize the current research landscape by reviewing the metrics and models that have been used for quantitative studies on core-periphery structure. Next, we formulate and explore various inferential problems in this context, such as estimation, hypothesis testing, and Bayesian inference, and discuss related computational techniques. We also outline the multidisciplinary scientific impact of core-periphery structure in a number of real-world networks. Throughout the article, we provide our own interpretation of the literature from a statistical perspective, with the goal of prioritizing open problems where contribution from the statistics community will be most effective and important.
翻译:许多现实世界网络的理论是,其核心领域结构由密连核心和松连外围组成,核心领域结构是核心领域。虽然这一现象在一系列科学学科中得到了广泛研究,但在统计界没有得到足够的重视。在这个解释性文章中,我们的目标是提高对这一问题的认识,鼓励统计人员处理该领域许多公开推论问题。为此目的,我们首先通过审查用于核心领域结构定量研究的计量标准和模型来总结目前的研究格局。接下来,我们制定和探讨这方面的各种推断问题,例如估计、假设测试和贝叶斯推论,并讨论相关的计算技术。我们还概述了一些现实世界网络中核心领域结构的多学科科学影响。我们在整个文章中从统计角度对文献进行自己的解释,目的是在统计界的贡献最为有效和重要的地方,优先考虑公开的问题。