FLEX: Feature-Logic Embedding Framework for CompleX Knowledge Graph Reasoning
Current best performing models for knowledge graph reasoning (KGR) introduce geometry objects or probabilistic distributions to embed entities and first-order logical (FOL) queries into low-dimensional vector spaces. They can be summarized as a center-size framework (point/box/cone, Beta/Gaussian di...
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Zusammenfassung: | Current best performing models for knowledge graph reasoning (KGR) introduce
geometry objects or probabilistic distributions to embed entities and
first-order logical (FOL) queries into low-dimensional vector spaces. They can
be summarized as a center-size framework (point/box/cone, Beta/Gaussian
distribution, etc.). However, they have limited logical reasoning ability. And
it is difficult to generalize to various features, because the center and size
are one-to-one constrained, unable to have multiple centers or sizes. To
address these challenges, we instead propose a novel KGR framework named
Feature-Logic Embedding framework, FLEX, which is the first KGR framework that
can not only TRULY handle all FOL operations including conjunction,
disjunction, negation and so on, but also support various feature spaces.
Specifically, the logic part of feature-logic framework is based on vector
logic, which naturally models all FOL operations. Experiments demonstrate that
FLEX significantly outperforms existing state-of-the-art methods on benchmark
datasets. |
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DOI: | 10.48550/arxiv.2205.11039 |