Authors
Tim Furche, Georg Gottlob, Giovanni Grasso, Giorgio Orsi, Christian Schallhart, Cheng Wang
Publication date
2011
Conference
Web Reasoning and Rule Systems: 5th International Conference, RR 2011, Galway, Ireland, August 29-30, 2011. Proceedings 5
Pages
61-76
Publisher
Springer Berlin Heidelberg
Description
Web extraction is the task of turning unstructured HTML into structured data. Previous approaches rely exclusively on detecting repeated structures in result pages. These approaches trade intensive user interaction for precision.
In this paper, we introduce the Amber (“Adaptable Model-based Extraction of Result Pages”) system that replaces the human interaction with a domain ontology applicable to all sites of a domain. It models domain knowledge about (1) records and attributes of the domain, (2) low-level (textual) representations of these concepts, and (3) constraints linking representations to records and attributes. Parametrized with these constraints, otherwise domain-independent heuristics exploit the repeated structure of result pages to derive attributes and records. Amber is implemented in logical rules to allow an explicit formulation of the heuristics and easy adaptation to different domains …
Total citations
201220132014201520162017201820195344111
Scholar articles
T Furche, G Gottlob, G Grasso, G Orsi, C Schallhart… - Web Reasoning and Rule Systems: 5th International …, 2011