Coarse-to-Fine Learning of Dynamic Causal Structures
- URL: http://arxiv.org/abs/2602.22532v1
- Date: Thu, 26 Feb 2026 02:12:34 GMT
- Title: Coarse-to-Fine Learning of Dynamic Causal Structures
- Authors: Dezhi Yang, Qiaoyu Tan, Carlotta Domeniconi, Jun Wang, Lizhen Cui, Guoxian Yu,
- Abstract summary: We introduce DyCausal, a dynamic causal structure learning framework.<n>DyCausal captures causal patterns within coarse-grained time windows, and then applies linear series to refine causal structures at each time step.<n>In addition, we propose an acyclic constraint based on matrix norm scaling, which improves efficiency while effectively constraining loops in evolving causal structures.
- Score: 42.51711083245258
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Learning the dynamic causal structure of time series is a challenging problem. Most existing approaches rely on distributional or structural invariance to uncover underlying causal dynamics, assuming stationary or partially stationary causality. However, these assumptions often conflict with the complex, time-varying causal relationships observed in real-world systems. This motivates the need for methods that address fully dynamic causality, where both instantaneous and lagged dependencies evolve over time. Such a setting poses significant challenges for the efficiency and stability of causal discovery. To address these challenges, we introduce DyCausal, a dynamic causal structure learning framework. DyCausal leverages convolutional networks to capture causal patterns within coarse-grained time windows, and then applies linear interpolation to refine causal structures at each time step, thereby recovering fine-grained and time-varying causal graphs. In addition, we propose an acyclic constraint based on matrix norm scaling, which improves efficiency while effectively constraining loops in evolving causal structures. Comprehensive evaluations on both synthetic and real-world datasets demonstrate that DyCausal achieves superior performance compared to existing methods, offering a stable and efficient approach for identifying fully dynamic causal structures from coarse to fine.
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