CFP last date
20 December 2024
Reseach Article

Layered Approach to Improve Web Information Retrieval

Published on November 2011 by Jayant Gadge, Dr. S.S. Sane, Dr. H.B. Kekre
2nd National Conference on Information and Communication Technology
Foundation of Computer Science USA
NCICT - Number 7
November 2011
Authors: Jayant Gadge, Dr. S.S. Sane, Dr. H.B. Kekre
011040e8-e516-4d92-a9d8-a36129f5f1fb

Jayant Gadge, Dr. S.S. Sane, Dr. H.B. Kekre . Layered Approach to Improve Web Information Retrieval. 2nd National Conference on Information and Communication Technology. NCICT, 7 (November 2011), 28-32.

@article{
author = { Jayant Gadge, Dr. S.S. Sane, Dr. H.B. Kekre },
title = { Layered Approach to Improve Web Information Retrieval },
journal = { 2nd National Conference on Information and Communication Technology },
issue_date = { November 2011 },
volume = { NCICT },
number = { 7 },
month = { November },
year = { 2011 },
issn = 0975-8887,
pages = { 28-32 },
numpages = 5,
url = { /proceedings/ncict/number7/4235-ncict056/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 2nd National Conference on Information and Communication Technology
%A Jayant Gadge
%A Dr. S.S. Sane
%A Dr. H.B. Kekre
%T Layered Approach to Improve Web Information Retrieval
%J 2nd National Conference on Information and Communication Technology
%@ 0975-8887
%V NCICT
%N 7
%P 28-32
%D 2011
%I International Journal of Computer Applications
Abstract

The Web has become the largest available repository of data. The exponential growth and the fast pace of change of the web makes really hard to retrieve all relevant information. The crawling of web pages with speed for finding relevant set of document is perhaps the main bottleneck for Web search engines. There are many factors that affect web search such criteria are web data, user behavior and spam etc. For retrieval of information, many web information retrieval models have been proposed, studied and empirically validated. In these information retrieval models, the documents are typically transformed into a suitable representation to make the retrieval efficient.

References
  1. Srinath Sriniwas, P.C. Bhatt ( 2002 ) “Introduction to Web Information Retrieval: A User Perspective” Resonance June 2002 Resonance, June 2002 Page 27-38
  2. P. Ravikumar, Ashutosh kumar singh (2010) “Web Structure Mining: Exploring Hyperlinks and Algorithms for information Retrieval” American Journal of Applied Science 7(6) 2010 Page 840-845
  3. Anwar A. Alhenshiri “Web Information Retrieval and Search Engine Techniques” Al-Satil Journal Page 55-81
  4. Nazli Goharian, Ankit Jain, Qian Sun “Comparative Analysis of Sparse Matrix Algorithms for Information Retrieval” Systemics Cybernetics and informatics volume 1, page 39- 46
  5. Changxia Hu, Xiaoxing Liu, Weiying Jin “Research on the Web Information Retrieval Model Based on Metadata and Query Expansion” 978-1-4244-4900-2/09 2009 IEEE.
  6. Mehran Sahami, Vibhu Mittal, Shumeet Baluja, Henry Rowley. “The Happy Searcher: Challenges in Web Information Retrieval” Google Inc. 1600 Amphitheatre Parkway, Mountain View, CA 94043
  7. Ricardo Baeza-Yate “Information retrieval in the Web: beyond current search engines” International Journal of Approximate Reasoning 34 (2003) 97–104
  8. Joon Ho Lee, “Properties of Extended Boolean models in information Retrieval” Korea research and development center, koera institute of science and technology
  9. Weiqun Luo, Chungui Liu, Zhiwei Liu, Conghua Wang (2010) “On N-layer Vector Space model-based Web Information Retrieval” 978-I-4244-3709-2/10 IEEE.
Index Terms

Computer Science
Information Sciences

Keywords

Web Information Retrieval Page Ranking Vector space model Layered Vector space approach