Authors
Ahmad Assaf, Eldad Louw, Aline Senart, Corentin Follenfant, Raphaël Troncy, David Trastour
Publication date
2012/5/25
Book
Proceedings of the First International Workshop on Open Data
Pages
13-21
Description
With today's public data sets containing billions of data items, more and more companies are looking to integrate external data with their traditional enterprise data to improve business intelligence analysis. These distributed data sources however exhibit heterogeneous data formats and terminologies and may contain noisy data. In this paper, we present RUBIX, a novel framework that enables business users to semi-automatically perform data integration on potentially noisy tabular data. This framework offers an extension to Google Refine with novel schema matching algorithms leveraging Freebase rich types. First experiments show that using Linked Data to map cell values with instances and column headers with types improves significantly the quality of the matching results and therefore should lead to more informed decisions.
Total citations
2015201620172018201920202021312
Scholar articles
A Assaf, E Louw, A Senart, C Follenfant, R Troncy… - Proceedings of the First International Workshop on …, 2012