The content discusses a parameter-sharing method for complex numbers employed in Knowledge Graph Embedding (KGE) models. The key points are:
KGE models represented using complex numbers have state-of-the-art performance, but demand high memory costs. To address this, the authors propose a parameter-sharing method that uses conjugate parameters in the transformation functions.
By using conjugate parameters, the authors' method can reduce the space complexity of relation embedding from O(nede + nrdr) to O(nede + nrdr/2), effectively halving the relation embedding size.
The authors demonstrate their method on two best-performing KGE models, ComplEx and 5⋆E, across five benchmark datasets. The results show that the conjugate models (Complϵx and 5⋆ϵ) achieve comparable accuracy to the original models, while reducing training time by 31% on average for 5⋆E.
Ablation studies confirm that the conjugate models retain the expressiveness of the original models, and that the parameter-sharing approach is more effective than simply reducing the number of parameters in the regularization process.
The authors conclude that their conjugate parameter-sharing method can help scale up KGs with less computational resources, while maintaining state-of-the-art performance.
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arxiv.org
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