Authors
Li Ding, Dominic DiFranzo, Alvaro Graves, James R Michaelis, Xian Li, Deborah L McGuinness, James A Hendler
Publication date
2010/4/26
Book
Proceedings of the 19th international conference on World Wide Web
Pages
1383-1386
Description
The Open Government Directive is making US government data available via websites such as Data.gov for public access. In this paper, we present a Semantic Web based approach that incrementally generates Linked Government Data (LGD) for the US government. In focusing on the trade-off between high quality LGD generation (requiring non-trivial human expert input) and massive LGD generation (requiring low human processing cost), our work is highlighted by the following features: (i) supporting low-cost and extensible LGD publishing for massive government data; (ii) using Social Semantic Web (Web3.0) technologies to incrementally enhance published LGD via crowdsourcing, and (iii) facilitating mash-ups by declaratively reusing cross-dataset mappings which usually are hard-coded in applications.
Total citations
20102011201220132014201520162017201820192020202120223161211797621221
Scholar articles
L Ding, D DiFranzo, A Graves, JR Michaelis, X Li… - Proceedings of the 19th international conference on …, 2010