Utilising semantic tags in XML clustering
Kutty, Sangeetha, Nayak, Richi, & Li, Yuefeng (2010) Utilising semantic tags in XML clustering. In Focused Retrieval and Evaluation : Proceedings of 8th International Workshop of the Initiative for the Evaluation of XML Retrieval, INEX 2009, Springerlink, Brisbane, Queensland, pp. 1167-1173.
This paper presents an overview of the experiments conducted using Hybrid Clustering of XML documents using Constraints (HCXC) method for the clustering task in the INEX 2009 XML Mining track. This technique utilises frequent subtrees generated from the structure to extract the content for clustering the XML documents. It also presents the experimental study using several data representations such as the structure-only, content-only and using both the structure and the content of XML documents for the purpose of clustering them. Unlike previous years, this year the XML documents were marked up using the Wiki tags and contains categories derived by using the YAGO ontology. This paper also presents the results of studying the effect of these tags on XML clustering using the HCXC method.
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|Item Type:||Conference Paper|
|Keywords:||XML documents, Clustering, INEX, Structure and Content, Semantic|
|Subjects:||Australian and New Zealand Standard Research Classification > INFORMATION AND COMPUTING SCIENCES (080000) > ARTIFICIAL INTELLIGENCE AND IMAGE PROCESSING (080100) > Pattern Recognition and Data Mining (080109)|
|Divisions:||Past > Schools > Computer Science
Past > QUT Faculties & Divisions > Faculty of Science and Technology
|Copyright Owner:||Copyright 2010 Springerlink|
This is the author-version of the work.
Conference proceedings published, by Springer Verlag, will be available via SpringerLink. http://www.springerlink.com
|Deposited On:||13 Mar 2011 22:20|
|Last Modified:||14 Mar 2011 06:22|
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