Compounding Geometric Operations for Knowledge Graph Completion

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Abstract

Geometric transformations including translation, rotation, and scaling are commonly used operations in image processing. Besides, some of them are successfully used in developing effective knowledge graph embedding (KGE). Inspired by the synergy, we propose a new KGE model by leveraging all three operations in this work. Since translation, rotation, and scaling operations are cascaded to form a composite one, the new model is named CompoundE. By casting CompoundE in the framework of group theory, we show that quite a few distanced-based KGE models are special cases of CompoundE. CompoundE extends the simple distance-based scoring functions to relation-dependent compound operations on head and/or tail entities. To demonstrate the effectiveness of CompoundE, we perform three prevalent KG prediction tasks including link prediction, path query answering, and entity typing, on a range of datasets. CompoundE outperforms extant models consistently, demonstrating its effectiveness and flexibility.

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APA

Ge, X., Wang, Y. C., Wang, B., & Jay Kuo, C. C. (2023). Compounding Geometric Operations for Knowledge Graph Completion. In Proceedings of the Annual Meeting of the Association for Computational Linguistics (Vol. 1, pp. 6947–6965). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2023.acl-long.384

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