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Automated Ranking for Web Databases using K-Means Algorithm and UQDR Approach

Published on February 2013 by P. Ayyadurai, S. Jayanthi
International Conference on Research Trends in Computer Technologies 2013
Foundation of Computer Science USA
ICRTCT - Number 4
February 2013
Authors: P. Ayyadurai, S. Jayanthi
0ae97c21-ce75-4955-9cde-e89c2b678d30

P. Ayyadurai, S. Jayanthi . Automated Ranking for Web Databases using K-Means Algorithm and UQDR Approach. International Conference on Research Trends in Computer Technologies 2013. ICRTCT, 4 (February 2013), 9-12.

@article{
author = { P. Ayyadurai, S. Jayanthi },
title = { Automated Ranking for Web Databases using K-Means Algorithm and UQDR Approach },
journal = { International Conference on Research Trends in Computer Technologies 2013 },
issue_date = { February 2013 },
volume = { ICRTCT },
number = { 4 },
month = { February },
year = { 2013 },
issn = 0975-8887,
pages = { 9-12 },
numpages = 4,
url = { /proceedings/icrtct/number4/10825-1042/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 International Conference on Research Trends in Computer Technologies 2013
%A P. Ayyadurai
%A S. Jayanthi
%T Automated Ranking for Web Databases using K-Means Algorithm and UQDR Approach
%J International Conference on Research Trends in Computer Technologies 2013
%@ 0975-8887
%V ICRTCT
%N 4
%P 9-12
%D 2013
%I International Journal of Computer Applications
Abstract

The Usage of internet in now a day is more and it became necessity for the people to do some applications such as searching web data bases in domains like Animation, vehicles, Movie, Real estates, etc. One of the problems in this context is ranking the results of a user query. Earlier approaches for addressing this problem have used frequencies of database values, query logs, and user profiles. A common thread in most of these approaches is that ranking is done in a user- and/or query-independent manner. This paper simulates the usage of ranking query results based on user and query Dependent ranks by taking user and query similarities as input including the workload. K- Means algorithm used for cluster and re ranking process, multiple database system used for clustering the data. Among rank learning methods, ranking SVM has been favorably applied to various applications, e. g. , optimizing search engines, improving data retrieval quality. We define these similarities formally in discuss their effectiveness analytically and experimentally over two distinct web databases.

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Index Terms

Computer Science
Information Sciences

Keywords

Automated Ranking Animation Database Vehicle And Movie Databases User Similarity Query Similarity Workload