KGSaw

One Size Does Not Fit All- Planning Methods for Data Fragmentation for Efficiently Creating Knowledge Graphs

authored by
Enrique Iglesias, Maria Esther Vidal
Abstract

This research addresses the challenges in planning knowledge graph (KG) creation. It presents KGSaw for partitioning and integrating data sources leveraging functional dependencies, while minimizing memory usage and execution time. Experimental results, involving existing KG creation engines, demonstrate KGSaw ability to enhance efficiency, with memory reductions up to 121.34 times and execution time improvements by a factor of 84.59. This emphasizes the importance of considering data source characteristics, like functional dependencies, in KG creation planning.

Organisation(s)
Institute of Data Science
L3S Research Centre
External Organisation(s)
German National Library of Science and Technology (TIB)
Type
Conference contribution
Pages
1668-1670
No. of pages
3
Publication date
21.05.2024
Publication status
Published
Peer reviewed
Yes
ASJC Scopus subject areas
Software
Electronic version(s)
https://doi.org/10.1145/3605098.3636186 (Access: Closed)