HySAE: An Efficient Semantic-Enhanced Representation Learning Model for Knowledge Hypergraph Link Prediction

Published: 29 Jan 2025, Last Modified: 29 Jan 2025WWW 2025 OralEveryoneRevisionsBibTeXCC BY-ND 4.0
Track: Semantics and knowledge
Keywords: Knowledge Hypergraph, Knowledge Representation Learning, Link Prediction
TL;DR: An excellent knowledge hypergraph representation learning model should achieve the trade-off between effectiveness and efficiency.
Abstract: Representation learning technique is an effective link prediction paradigm to alleviate the incompleteness of knowledge hypergraphs. However, the $n$-ary complex semantic information inherent in knowledge hypergraphs causes existing methods to face the dual limitations of weak effectiveness and low efficiency. In this paper, we propose a novel knowledge hypergraph representation learning model, HySAE, which can achieve a satisfactory trade-off between effectiveness and efficiency. Concretely, HySAE builds an efficient semantic-enhanced 3D scalable end-to-end embedding architecture to sufficiently capture knowledge hypergraph $n$-ary complex semantic information with fewer parameters, which can significantly reduce the computational cost of the model. In particular, we also design an efficient position-aware entity role semantic embedding way and two enhanced semantic learning strategies to further improve the effectiveness and scalability of our proposed method. Extensive experimental results on all datasets demonstrate that HySAE consistently outperforms state-of-the-art baselines, with an average improvement of 9.15\%, a maximum improvement of 39.44\%, an average 10.39x faster, and 75.79\% fewer parameters.
Submission Number: 1026
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