Fast and adaptive dynamics-on-graphs to dynamics-of-graphs translation

Front Big Data. 2023 Nov 17:6:1274135. doi: 10.3389/fdata.2023.1274135. eCollection 2023.

Abstract

Numerous networks in the real world change with time, producing dynamic graphs such as human mobility networks and brain networks. Typically, the "dynamics on graphs" (e.g., changing node attribute values) are visible, and they may be connected to and suggestive of the "dynamics of graphs" (e.g., evolution of the graph topology). Due to two fundamental obstacles, modeling and mapping between them have not been thoroughly explored: (1) the difficulty of developing a highly adaptable model without solid hypotheses and (2) the ineffectiveness and slowness of processing data with varying granularity. To solve these issues, we offer a novel scalable deep echo-state graph dynamics encoder for networks with significant temporal duration and dimensions. A novel neural architecture search (NAS) technique is then proposed and tailored for the deep echo-state encoder to ensure strong learnability. Extensive experiments on synthetic and actual application data illustrate the proposed method's exceptional effectiveness and efficiency.

Keywords: ESN; GNN; NAS; graph; reservoir computing.

Grants and funding

The author(s) declare that no financial support was received for the research, authorship, and/or publication of this article.