Directed Acyclic Graph Structure Learning from Dynamic Graphs
DOI:
https://doi.org/10.1609/aaai.v37i6.25913Keywords:
ML: Graph-based Machine Learning, DMKM: Graph Mining, Social Network Analysis & Community Mining, ML: Causal LearningAbstract
Estimating the structure of directed acyclic graphs (DAGs) of features (variables) plays a vital role in revealing the latent data generation process and providing causal insights in various applications. Although there have been many studies on structure learning with various types of data, the structure learning on the dynamic graph has not been explored yet, and thus we study the learning problem of node feature generation mechanism on such ubiquitous dynamic graph data. In a dynamic graph, we propose to simultaneously estimate contemporaneous relationships and time-lagged interaction relationships between the node features. These two kinds of relationships form a DAG, which could effectively characterize the feature generation process in a concise way. To learn such a DAG, we cast the learning problem as a continuous score-based optimization problem, which consists of a differentiable score function to measure the validity of the learned DAGs and a smooth acyclicity constraint to ensure the acyclicity of the learned DAGs. These two components are translated into an unconstraint augmented Lagrangian objective which could be minimized by mature continuous optimization techniques. The resulting algorithm, named GraphNOTEARS, outperforms baselines on simulated data across a wide range of settings that may encounter in real-world applications. We also apply the proposed approach on two dynamic graphs constructed from the real-world Yelp dataset, demonstrating our method could learn the connections between node features, which conforms with the domain knowledge.Downloads
Published
2023-06-26
How to Cite
Fan, S., Zhang, S., Wang, X., & Shi, C. (2023). Directed Acyclic Graph Structure Learning from Dynamic Graphs. Proceedings of the AAAI Conference on Artificial Intelligence, 37(6), 7512-7521. https://doi.org/10.1609/aaai.v37i6.25913
Issue
Section
AAAI Technical Track on Machine Learning I