Til hovedinnhold
English
Publikasjoner

An assertion and alignment correction framework for large scale knowledge bases

Vitenskapelig artikkel
Publiseringsår
2021
Tidsskrift
Semantic Web Journal
Eksterne nettsted
Cristin
Fulltekst
Doi
Forfattere
Jiaoyan Chen, Ernesto Jimenez-Ruiz, Ian Horrocks, Xi Chen, Erik Bryhn Myklebust

Sammendrag

Various knowledge bases (KBs) have been constructed via information extraction from encyclopedias, text and tables, as well as alignment of multiple sources. Their usefulness and usability is often limited by quality issues. One common issue is the presence of erroneous assertions and alignments, often caused by lexical or semantic confusion. We study the problem of correcting such assertions and alignments, and present a general correction framework which combines lexical matching, context-aware sub-KB extraction, semantic embedding, soft constraint mining and semantic consistency checking. The framework is evaluated with one set of literal assertions from DBpedia, one set of entity assertions from an enterprise medical KB, and one set of mapping assertions from a music KB constructed by integrating Wikidata, Discogs and MusicBrainz. It has achieved promising results, with a correction rate (i.e., the ratio of the target assertions/alignments that are corrected with right substitutes) of 70.1%, 60.9% and 71.8%, respectively.