Disentangling Complex Systems: IdopNetwork Meets GLMY Homology Theory
Disentangling Complex Systems: IdopNetwork Meets GLMY Homology Theory
The study of complex systems has captured widespread attention in recent years, emphasizing the exploration of interactions and emergent properties among system units. Network analysis based on graph theory has emerged as a powerful approach for analyzing network topology and functions, making them widely adopted in complex systems. IdopNetwork is an advanced statistical physics framework that constructs the interaction within complex systems by integrating large-scale omics data. By combining GLMY theory, the structural characteristics of the network topology can be traced, providing deeper insights into the dynamic evolution of the network. This combination not only offers a novel perspective for dissecting the internal regulation of complex systems from a holistic standpoint but also provides significant support for applied fields such as data science, complex disease, and materials science.
Shuang Wu、Mengmeng Zhang
系统科学、系统技术信息科学、信息技术
Shuang Wu,Mengmeng Zhang.Disentangling Complex Systems: IdopNetwork Meets GLMY Homology Theory[EB/OL].(2025-05-07)[2025-06-14].https://arxiv.org/abs/2505.04140.点此复制
评论