Metadata-driven Table Union Search: Leveraging Semantics for Restricted Access Data Integration
Journal:
arXiv
Published Date:
Feb 28, 2025
Abstract
Over the past decade, the Table Union Search (TUS) task has aimed to identify
unionable tables within data lakes to improve data integration and discovery.
While numerous solutions and approaches have been introduced, they primarily
rely on open data, making them not applicable to restricted access data, such
as medical records or government statistics, due to privacy concerns.
Restricted data can still be shared through metadata, which ensures
confidentiality while supporting data reuse. This paper explores how TUS can be
computed on restricted access data using metadata alone. We propose a method
that achieves 81% accuracy in unionability and outperforms existing benchmarks
in precision and recall. Our results highlight the potential of metadata-driven
approaches for integrating restricted data, facilitating secure data discovery
in privacy-sensitive domains. This aligns with the FAIR principles, by ensuring
data is Findable, Accessible, Interoperable, and Reusable while preserving
confidentiality.