Neural-Symbolic Logic Query Answering in Non-Euclidean Space
arXiv cs.AI / 3/18/2026
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Key Points
- HYQNET is a neural-symbolic model for logic query reasoning on knowledge graphs that fully leverages hyperbolic space to capture hierarchical structure.
- It decomposes first-order logic queries into relation projections and logical operations over fuzzy sets, and employs a hyperbolic GNN for knowledge graph completion to handle missing links.
- The approach preserves structural dependencies and demonstrates strong performance on three benchmark datasets compared with Euclidean-based methods.
- The work argues that hyperbolic representations offer improved interpretability and more effective reasoning due to better modeling of hierarchical query trees.
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