Publication:

Fuzzy Constraints for Knowledge Graph Embeddings

 
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cris.virtual.orcid0000-0003-4824-1199
cris.virtual.orcid0000-0003-2529-5477
cris.virtual.orcid0000-0002-8931-8343
cris.virtual.orcid0000-0002-6157-5997
cris.virtualsource.department505a9fa2-2261-4859-8c77-73c2ba21244c
cris.virtualsource.department9d6fa2a2-655c-4182-b90b-ee51beb7e92b
cris.virtualsource.departmentcf258e83-0c92-4181-9cbd-275fb802d237
cris.virtualsource.department7761ec95-5106-420e-b10c-b5cc2185d312
cris.virtualsource.orcid505a9fa2-2261-4859-8c77-73c2ba21244c
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cris.virtualsource.orcidcf258e83-0c92-4181-9cbd-275fb802d237
cris.virtualsource.orcid7761ec95-5106-420e-b10c-b5cc2185d312
dc.contributor.authorWeyns, Michael
dc.contributor.authorBonte, Pieter
dc.contributor.authorDe Turck, Filip
dc.contributor.authorOngenae, Femke
dc.date.accessioned2026-04-14T07:16:11Z
dc.date.available2026-04-14T07:16:11Z
dc.date.createdwos2025-11-23
dc.date.issued2026
dc.description.abstractKnowledge graph embeddings can be trained to infer which missing facts are likely to be true. For this, false training examples need to be derived from the available set of positive facts, so that the embedding models can learn to recognize the boundary between fact and fiction. Various negative sampling strategies have been proposed to tackle this issue, some of which have tried to make use of axiomatic knowledge claims to minimize the number of nonsensical negative samples being generated. By putting constraints on the construction of each candidate sample, these techniques have tried to maximize the number of true negatives outputted by the procedure. However, such strategies rely exclusively on binary interpretations of constraint-based reasoning and have so far also failed to incorporate literal-valued entities into the negative sampling procedure. To alleviate these shortcomings, we propose a negative sampling strategy based on a combination of fuzzy set theory and strict axiomatic semantics, which allow for the incorporation of literal-awareness when determining domain or range membership values. When evaluated on benchmark datasets AIFB and MUTAG, we found that these improvements offered significant performance gains across multiple metrics with respect to state of the art negative sampling techniques, suggesting that fuzzy semantics and literal-awareness can help to improve the quality of generated negative samples. On AIFB, our fuzzy negative sampling approach outperforms baselines on four metrics, with performance gains up to 17.14%. On MUTAG, our fuzzy negative sampling approach outperforms baselines on eight metrics, with performance gains up to 55.49%.
dc.description.wosFundingTextMichael Weyns (1SD8821N) and Pieter Bonte (1266521N) are funded, respectively, by a strategic base research grant and a postdoctoral fellowship, both awarded by the Fund for Scientific Research Flanders (FWO).
dc.identifier.doi10.1142/s0218194025500421
dc.identifier.issn0218-1940
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/59075
dc.language.isoeng
dc.provenance.editstepusergreet.vanhoof@imec.be
dc.publisherWORLD SCIENTIFIC PUBL CO PTE LTD
dc.source.beginpage1
dc.source.endpage49
dc.source.issue1
dc.source.journalINTERNATIONAL JOURNAL OF SOFTWARE ENGINEERING AND KNOWLEDGE ENGINEERING
dc.source.numberofpages49
dc.source.volume36
dc.title

Fuzzy Constraints for Knowledge Graph Embeddings

dc.typeJournal article
dspace.entity.typePublication
imec.internal.crawledAt2026-04-07
imec.internal.sourcecrawler
imec.internal.wosCreatedAt2026-04-07
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