David Jerry Jones, Sabhahit Narayan G, Stramaglia Sebastiano, Matteo T Di, Boccaletti Stefano, Jalan Sarika
Complex Systems Lab, Department of Physics, Indian Institute of Technology Indore, Khandwa Road, Indore 453552, India.
Network Science Institute, Northeastern University, Boston, MA 02115, USA.
Entropy (Basel). 2024 Oct 8;26(10):848. doi: 10.3390/e26100848.
In stock markets, nonlinear interdependencies between various companies result in nontrivial time-varying patterns in stock prices. A network representation of these interdependencies has been successful in identifying and understanding hidden signals before major events like stock market crashes. However, these studies have revolved around the assumption that correlations are mediated in a pairwise manner, whereas, in a system as intricate as this, the interactions need not be limited to pairwise only. Here, we introduce a general methodology using information-theoretic tools to construct a higher-order representation of the stock market data, which we call . This framework enables us to examine stock market events by analyzing the following functional hypergraph quantities: Forman-Ricci curvature, von Neumann entropy, and eigenvector centrality. We compare the corresponding quantities of networks and hypergraphs to analyze the evolution of both structures and observe features like robustness towards events like crashes during the course of a time period.
在股票市场中,各公司之间的非线性相互依赖关系导致股价呈现出复杂的时变模式。这些相互依赖关系的网络表示法已成功地在诸如股市崩盘等重大事件之前识别和理解隐藏信号。然而,这些研究一直围绕着相关性以成对方式介导的假设,而在这样一个复杂的系统中,相互作用不一定仅限于成对。在这里,我们引入一种使用信息论工具的通用方法来构建股票市场数据的高阶表示,我们称之为 。这个框架使我们能够通过分析以下功能超图量来研究股票市场事件:福尔曼 - 里奇曲率、冯·诺依曼熵和特征向量中心性。我们比较网络和超图的相应量,以分析两种结构的演变,并观察在一段时间内对诸如崩盘等事件的稳健性等特征。