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Wasserstein-Fisher-Rao Embedding: Logical Query Embeddings with Local Comparison and Global Transport

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Answering complex queries on knowledge graphs is important but particularly challenging because of the data incompleteness. Query embedding methods address this issue by learning-based models and simulating logical reasoning with set operators. Previous works focus on specific forms of embeddings, but scoring functions between embeddings are underexplored. In contrast to existing scoring functions motivated by local comparison or global transport, this work investigates the local and global trade-off with unbalanced optimal transport theory. Specifically, we embed sets as bounded measures in $\real$ endowed with a scoring function motivated by the Wasserstein-Fisher-Rao metric. Such a design also facilitates closed-form set operators in the embedding space. Moreover, we introduce a convolution-based algorithm for linear time computation and a block-diagonal kernel to enforce the trade-off. Results show that WFRE can outperform existing query embedding methods on standard datasets, evaluation sets with combinatorially complex queries, and hierarchical knowledge graphs. Ablation study shows that finding a better local and global trade-off is essential for performance improvement.

Zihao Wang, Weizhi Fei, Hang Yin, Yangqiu Song, Ginny Y. Wong, Simon See• 2023

Related benchmarks

TaskDatasetResultRank
Logical Query AnsweringFB15k-237
MRR (2-inverse path)0.351
29
Knowledge Graph ReasoningFB15k-237--
19
Knowledge Graph ReasoningFB15k
1P Score81.1
12
Knowledge Graph ReasoningNELL
1P Score58.6
10
Complex Query AnsweringWN18RR
1P52.78
3
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