Sciweavers

Share
ICEIS
2009
IEEE

Semi-supervised Information Extraction from Variable-length Web-page Lists

12 years 1 months ago
Semi-supervised Information Extraction from Variable-length Web-page Lists
We propose two methods for constructing automated programs for extraction of information from a class of web pages that are very common and of high practical significance - variable-length lists of records with identical structure. Whereas most existing methods would require multiple example instances of the target web page in order to be able to construct extraction rules, our algorithms require only a single example instance. The first method analyzes the document object model (DOM) tree of the web page to identify repeatable structure that includes all of the specified data fields of interest. The second method provides an interactive way of discovering the list node of the DOM tree by visualizing the correspondence between portions of XPath expressions and visual elements in the web page. Both methods construct extraction rules in the form of XPath expressions, facilitating ease of deployment and integration with other information systems. International Conf. on Enterprise Inf...
Daniel Nikovski, Alan Esenther, Akihiro Baba
Added 23 May 2010
Updated 23 May 2010
Type Conference
Year 2009
Where ICEIS
Authors Daniel Nikovski, Alan Esenther, Akihiro Baba
Comments (0)
books