Research on Intelligent Information Retrieval Based on Semantic Web Technology

Article Preview

Abstract:

According to the rapid development of the Internet and the increase of the network resources, it was very important to search the information resources for meeting the need of large ground of users. The key words were used as the indexes for retrieval with traditional method. But it couldnt reflect the real purposes and intentions of the users precisely. An improved information retrieval method based on the semantic web technology was proposed for carrying out the information retrieval work precisely and effectively. The mew retrieval system was not just recognizing the words simply, but it could comprehend the semantic ingredients of the words and sentences. The semantic web retrieval system was constructed eventually. Comparing to the traditional keywords retrieval method, the similarity degree was calculated in the simulation, simulation result shows that the retrieval precision ratio of new method increases by 15%, then the intelligent, efficient and accurate information retrieval system is realized successfully.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

2075-2078

Citation:

Online since:

August 2013

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Yang Wen-zhong, Zhang jing. A intelligent information retrieval based on search engine. Microcomputer Applications, 2007, 28(2): 166-169.

Google Scholar

[2] Xu Xiang-nan. artificial intelligent and intelligent information retrieval. Information retrieval, 2005, 35(1): 53-54.

Google Scholar

[3] Chen Xiao-hong, wang bin, the research on extension methods of intelligent information retrieval, books information science, No. 124: 83-86.

Google Scholar

[4] WU Lan. Based on The Variety Constraint Model of Remote Education Database Query Optimization Algorithm[J]. Bulletin of Science and Technolog, 2013, 1(29): 155-160.

Google Scholar

[5] Nick Crofts, Martin Doerr, Tony Gill, eal. Definition of the CIDOC Conceptual Reference Model[R]. ICOM/CIDOC CRM Special Interest Group, Version 3. 4. 9, 30th November (2003).

Google Scholar

[6] R. Punchalard, On adaptive IIR lattice notch filter using a robust variable step-size for the detection of sinusoid, The 8th International Conference on Communication Systems, ICCS 2002, Vol. 2, p.800 – 804.

DOI: 10.1109/iccs.2002.1183240

Google Scholar