GammaE: Gamma Embeddings for Logical Queries on Knowledge Graphs
- URL: http://arxiv.org/abs/2210.15578v2
- Date: Sat, 22 Apr 2023 14:54:08 GMT
- Title: GammaE: Gamma Embeddings for Logical Queries on Knowledge Graphs
- Authors: Dong Yang, Peijun Qing, Yang Li, Haonan Lu, Xiaodong Lin
- Abstract summary: We propose a novel probabilistic embedding model, namely Gamma Embeddings (GammaE) for encoding entities and queries.
We utilize the linear property and strong boundary support of the Gamma distribution to capture more features of entities and queries.
The performance of GammaE is validated on three large logical query datasets.
- Score: 8.880867550516472
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Embedding knowledge graphs (KGs) for multi-hop logical reasoning is a
challenging problem due to massive and complicated structures in many KGs.
Recently, many promising works projected entities and queries into a geometric
space to efficiently find answers. However, it remains challenging to model the
negation and union operator. The negation operator has no strict boundaries,
which generates overlapped embeddings and leads to obtaining ambiguous answers.
An additional limitation is that the union operator is non-closure, which
undermines the model to handle a series of union operators. To address these
problems, we propose a novel probabilistic embedding model, namely Gamma
Embeddings (GammaE), for encoding entities and queries to answer different
types of FOL queries on KGs. We utilize the linear property and strong boundary
support of the Gamma distribution to capture more features of entities and
queries, which dramatically reduces model uncertainty. Furthermore, GammaE
implements the Gamma mixture method to design the closed union operator. The
performance of GammaE is validated on three large logical query datasets.
Experimental results show that GammaE significantly outperforms
state-of-the-art models on public benchmarks.
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