Graph Meets Deep Unfolding: An Interpretable Mutual-benefit Multi-view Learning Network
DOI:
https://doi.org/10.1609/aaai.v40i28.39528Abstract
Significant efforts have been focused on enhancing the utilization of multiple node features and topological structures in multi-view graph learning through explicit model-driven and implicit deep learning-based methodologies. The former excels in embedding prior knowledge, thereby offering theoretical interpretability but is limited in application flexibility due to manual parameter selection. In contrast, the latter leverages automatic differentiation, providing greater flexibility but lacking theoretical interpretability due to their opaque nature. Motivated by these observations, we propose an interpretable deep unfolding network for mutual-benefit multi-view graph learning, aiming to combine the strengths of both approaches. Specifically, we employ the Alternating Direction Method of Multipliers (ADMM) to solve a multi-view graph learning model with sparse and low-rank constraints. This solution is then integrated into deep unfolding networks to enhance interpretability. Furthermore, we convert optimization conditions into implicit losses and utilize automatic differentiation to update parameters, reducing the need for manual tuning and increasing flexibility. This integration optimizes multi-view learning for a graph representation that balances interpretability and flexibility. Empirical evaluations on six diverse datasets demonstrate the effectiveness and superiority of the proposed method over state-of-the-art approaches.Published
2026-03-14
How to Cite
Lin, R., He, H., Wu, Y., Du, S., & Zhang, L. (2026). Graph Meets Deep Unfolding: An Interpretable Mutual-benefit Multi-view Learning Network. Proceedings of the AAAI Conference on Artificial Intelligence, 40(28), 23559–23567. https://doi.org/10.1609/aaai.v40i28.39528
Issue
Section
AAAI Technical Track on Machine Learning V