| Literature DB >> 31330590 |
Michael T Schaub1,2, Jean-Charles Delvenne3,4, Renaud Lambiotte5, Mauricio Barahona6.
Abstract
Complex systems and relational data are often abstracted as dynamical processes on networks. To understand, predict, and control their behavior, a crucial step is to extract reduced descriptions of such networks. Inspired by notions from control theory, we propose a time-dependent dynamical similarity measure between nodes, which quantifies the effect a node-input has on the network. This dynamical similarity induces an embedding that can be employed for several analysis tasks. Here we focus on (i) dimensionality reduction, i.e., projecting nodes onto a low-dimensional space that captures dynamic similarity at different timescales, and (ii) how to exploit our embeddings to uncover functional modules. We exemplify our ideas through case studies focusing on directed networks without strong connectivity and signed networks. We further highlight how certain ideas from community detection can be generalized and linked to control theory, by using the here developed dynamical perspective.Year: 2019 PMID: 31330590 DOI: 10.1103/PhysRevE.99.062308
Source DB: PubMed Journal: Phys Rev E ISSN: 2470-0045 Impact factor: 2.529