Heterogeneous graph representation learning seeks to capture the complex structural and semantic properties in heterogeneous graphs. The integration of hyperbolic space, which is well-suited to modeling the intrinsic degree power-law distribution of graphs, has facilitated significant advancements in this area. Recent methods leverage hyperbolic attention mechanisms to fuse semantic information within metapath-induced subgraphs. Despite this progress, a major limitation remains: these methods leverage attention for information aggregation but fail to model the causal relationship between semantic fusion and downstream task performance, leading to spurious semantic associations that reduce robustness to noise and impair cross-task generalization. To address this challenge, we propose a Causal ATtention enhanCed Hyperbolic Heterogeneous Graph Neural Network (CATCH), intending to achieve sufficient semantic information fusion. To the best of our knowledge, CATCH is the first to integrate hyperbolic space with causal inference for heterogeneous graph representations, directly targeting spurious semantic correlations at the source. Specifically, CATCH explicitly encodes the Euclidean node attributes of different types into a shared semantic hyperbolic space. To capture the underlying semantics, context subgraphs based on one-order and high-order metapaths are constructed to facilitate hyperbolic attention-based intra-level and inter-level information aggregation, thus forming comprehensive representations. Finally, a causal attention enhancement mechanism is implemented with direct supervision on attention learning, leveraging counterfactual causal inference to generate counterfactual representations for computing direct causal effects. By jointly optimizing a task-specific objective alongside a causal loss, CATCH promotes more faithful semantic encoding, leading to improved robustness and generalization. Extensive experiments on four real-world datasets validate the superior performance of CATCH across multiple tasks. The implementation is available at https://github.com/Crystal-LiuBojia/CATCH.
Recommendation performance on Amazon-CD and Amazon-Book.
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