--> Document Information


                                             

FOLKSONOMIES VERSUS AUTOMATIC KEYWORD EXTRACTION: AN EMPIRICAL STUDY 
Author(s): Hend S. Al-khalifa, Hugh C. Davis
Paper abstract: Semantic Metadata, which describes the meaning of documents, can be produced either manually or else semi-automatically using information extraction techniques. Manual techniques are expensive if they rely on skilled cataloguers, but a possible alternative is to make use of community produced annotations such as those collected in folksonomies. This paper reports on an experiment that we carried out to validate the assumption that folksonomies contain higher semantic value than keywords extracted by machines. The experiment has been carried-out in two ways: subjectively, by asking a human indexer to evaluate the quality of the generated keywords from both systems; and automatically, by measuring the percentage of overlap between the folksonomy set and machine generated keywords set. The result of the experiment can be considered as evidence for the rich semantics of folksonomies, demonstrating that folksonomies used in the del.icio.us bookmarking service can be used in the process of generating semantic metadata to annotate web resources.
Keywords: Folksonomy, Keyword Extraction, Tags, Semantics.
Type: Journal Paper  
Full Contents (click to dowload):  
First Page: 132 
Last Page: 143 
Year: 2006  
Editors: Pedro Isaías and Marcin Paprzycki  
ISBN: ISSN: 1646-3692  
Language: English  
Conference Name: IADIS International Journal on Computer Science and Information System  
Volume: V I, 2  

new search -->

If you are a IADIS member click here to login