Tripl\`etoile: Extraction of Knowledge from Microblogging Text
Heliyon 10(12) (2024) e32479 Numerous methods and pipelines have recently emerged for the automatic extraction of knowledge graphs from documents such as scientific publications and patents. However, adapting these methods to incorporate alternative text sources like micro-blogging posts and news ha...
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Zusammenfassung: | Heliyon 10(12) (2024) e32479 Numerous methods and pipelines have recently emerged for the automatic
extraction of knowledge graphs from documents such as scientific publications
and patents. However, adapting these methods to incorporate alternative text
sources like micro-blogging posts and news has proven challenging as they
struggle to model open-domain entities and relations, typically found in these
sources. In this paper, we propose an enhanced information extraction pipeline
tailored to the extraction of a knowledge graph comprising open-domain entities
from micro-blogging posts on social media platforms. Our pipeline leverages
dependency parsing and classifies entity relations in an unsupervised manner
through hierarchical clustering over word embeddings. We provide a use case on
extracting semantic triples from a corpus of 100 thousand tweets about digital
transformation and publicly release the generated knowledge graph. On the same
dataset, we conduct two experimental evaluations, showing that the system
produces triples with precision over 95% and outperforms similar pipelines of
around 5% in terms of precision, while generating a comparatively higher number
of triples. |
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DOI: | 10.48550/arxiv.2408.14908 |