Login / Signup

Full reconstruction of simplicial complexes from binary contagion and Ising data.

Huan WangChuang MaHan-Shuang ChenYing-Cheng LaiHai-Feng Zhang
Published in: Nature communications (2022)
Previous efforts on data-based reconstruction focused on complex networks with pairwise or two-body interactions. There is a growing interest in networks with higher-order or many-body interactions, raising the need to reconstruct such networks based on observational data. We develop a general framework combining statistical inference and expectation maximization to fully reconstruct 2-simplicial complexes with two- and three-body interactions based on binary time-series data from two types of discrete-state dynamics. We further articulate a two-step scheme to improve the reconstruction accuracy while significantly reducing the computational load. Through synthetic and real-world 2-simplicial complexes, we validate the framework by showing that all the connections can be faithfully identified and the full topology of the 2-simplicial complexes can be inferred. The effects of noisy data or stochastic disturbance are studied, demonstrating the robustness of the proposed framework.
Keyphrases
  • electronic health record
  • big data
  • single cell
  • cross sectional
  • deep learning