Simple Augmentations of Logical Rules for Neuro-Symbolic Knowledge Graph CompletionDownload PDF

Anonymous

16 Dec 2022 (modified: 05 May 2023)ACL ARR 2022 December Blind SubmissionReaders: Everyone
Abstract: High-quality and high-coverage rule sets are imperative to the success of Neuro-Symbolic Knowledge Graph Completion (NS-KGC) models, because they form the basis of all symbolic inferences. Recent literature builds neural models for generating rule sets, however, preliminary experiments show that they struggle with maintaining high coverage. In this work, we suggest three simple augmentations to existing rule sets: (1) transforming rules to their abductive forms, (2) generating equivalent rules that use inverse forms of constituent relations and (3) random walks that propose new rules. Finally, we prune potentially low quality rules. Experiments over four datasets and four ruleset-baseline settings suggest that these simple augmentations consistently improve results, and obtain up to 7.1 pt MRR and 8.5 pt Hits@1 gains over using rules without augmentations.
Paper Type: short
Research Area: Information Extraction
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