Cogprints

SEMANTIC CLUSTERING WITH CONTEXT ONTOLOGY FOR INFORMATION RETRIEVAL SYSTEM

lai, Dr thinn (2013) SEMANTIC CLUSTERING WITH CONTEXT ONTOLOGY FOR INFORMATION RETRIEVAL SYSTEM. [Journal (Paginated)]

Full text available as:

[img]
Preview
PDF
117Kb

Abstract

Nowadays, there are so many increasing amount of information within world-wide web. For these increasing amounts of information, we need efficient and effective index structure when we have to find needed information. Most indexing techniques directly matched terms from the document and terms from query. But there is a problem when matching. That is most system doesn’t consider the meaning of the words. A word can have more than one meaning. But most systems didn’t consider the context (multiple meaning of a word). This paper presents how to construct an index structure using SSTC and context ontology that provides multiple meanings of a word. Context provides extra information to improve search result relevance. This paper produces context semantic cluster to provide indexing of search engine.

Item Type:Journal (Paginated)
Keywords:indexing, context ontology, semantic suffix tree clustering (SSTC)
Subjects:Computer Science > Artificial Intelligence
ID Code:9101
Deposited By: lai, mr thinn
Deposited On:18 Nov 2013 21:09
Last Modified:18 Nov 2013 21:09

References in Article

Select the SEEK icon to attempt to find the referenced article. If it does not appear to be in cogprints you will be forwarded to the paracite service. Poorly formated references will probably not work.

Information Retrieval and Web Search (chapter 6) from Web Data Mining, Exploring Hyperlinks, Contents and Usage Data.

Gupta P., and Sharma A.K., "Context based Indexing in Search Engines using Ontology", International Journal of Computer Application, 2010.

S. Deerwester, S.T. Dumais, G. W. Furnas, T. K. Landauer, and R. Harshman. Indexing by Latent Semantic Analysis. Journal of the American Society for Information Science, 1990.

Janruang, J., Guha, S.: Semantic Suffix Tree Clustering. In: DEIT 2011, IEEE, Bali, Indonesia (2011).

Haibo Jia, Julian Newman, Huaglory Tianfield "A new Formal Concept Analysis based learning approach to Ontology building"

http://en.wikipedia.org/wiki/Ontology (information_science)

Janruang, J., Guha, S., "Applying Semantic Suffix Tree Clustering"

Oren Zamir and Oren Etizioni, Web Document Clustering: A feasibility demonstration. In the proceedings of SIGR, 1998.

C.Manning, P. Raghavan, and H.Schutze, "An introduction to information retrieval, "Cambridge, England: Cambridge University Press, 2009.

Maxim Marynov, Boris Novikov, "An Indexing Algorithm for Text Retrieval", University of St.-Petersburg, Russia.

E.W. Brown, J.P. Callan, W.B. Croft, and J.E.B. Moss. Supporting full-text information retrieval with a persistent object store,. In Proc. Intnl.Conf, on EDBT., 1994.

Sajendra Kuar, Ram Kumar Rana, Pawan Singh, "A Semantic Query Transformation Approach Based on Ontology for Search Engine", International Journal on Computer Science and Engineering (IJCSE), May 2012.

R.Baeza-Yates and B.Ribeiro-Neto. Modern Information Retrieval. Addison Wesley, 1999.

N Chen, Technical Report 2006-505 “A survey of Indexing and Retrieval of Multimodal Documents: Text and Images”.

K. Kotis, G. A. Vouros, K. Stergiou, Department of Information and Communication System Engineering, “Towards Automatic Merging of Domain Ontology: The HCONE- mearge approach.

Metadata

Repository Staff Only: item control page