Retrieving of Information has been the fundamental process to any storage file. With advent of Technology, it is possible to
store a large amount of data and retrieving them has become tedious task for the incorporators and users. Information Retrieval Systems
emerged from the demand to minimize human resources required in the finding of needed information to accomplish a task. This paper
presents the overview of an Information retrieval system, Information Retrieval System Capabilities like search and browse capabilities,
Functional Overview of IRS and Automatic Indexing that is performed on data items .This paper talks about On-AIR architecture for
retrieving data from video containing databases using Information Retrieval Systems.
Published In:IJCSN Journal Volume 8, Issue 1
Date of Publication : February 2019
Pages : 40-45
Figures :06
Tables : --
Raviteja Varma :
Currently pursuing III B.Tech at
GITAM University,Hyderabad. My Research areas are Data
Mining,Information Retrieval Systems,Big Data Analytics.
K Radha :
working as an Asst Professor at GITAM
University,Hyderabad. She has Completed M.Tech(CSE) at
JNTUH,Pursuing PhD at KL University,Vijayawada.She has 12
years of Teaching Experience and 1Year Industrial
Experience.She has published numerous research papers and
presented at Various conferences.She is a Member of IAENG.
Information retrieval system has the high potential to
revolutionize the present and conventional storing and
retrieving techniques. Ten years ago, the algorithms
developed were restricted in scope allowing theoreticians
to limit their focus to very specific areas. But the insertion
of technology in systems like Internet has changed the way
problems were bounded. Hence, efficient algorithms must
be constructed in order to handle enormous data and
minimal user search statement information must be
considered along with optimal usage of functional aspects
of Information Retrieval system.
[1] Gerald J Kowalski, Mark T Maybury: Information
Storage and Retrieval Systems , Theory and
Implementation.
[2] Paz-Trillo, C., Wassermann, R., and Braga, P:An
Information Retrieval Application using Ontologies
(2005).
[3] R. Baeza-Yates and B. Ribeiro-Neto.Modern
Information Retrieval. Addison Wesley Longman,
1999.
[4] M. Mauldin. Conceptual Information Retrieval: A case
study in adaptive partial parsing. Kluwer Academic
Publishers, 1991.
[5] Stanford Home Page: https://nlp.stanford.edu/IRbook/
html/htmledition/a-first-take-at-building-aninverted-
index-1.html
[6] ResearcherGate:
https://www.researchgate.net/figure/CYC-assistedconcept-
enpansion-tree-An-example-of-demonstratingconcept-
expansion-is_fig1_257728125
[7] Information Retrieval: search process, techniques and
strategies KiranPrakashBachchhav Librarian,
SarvajanikShikshanSanstha'sAdv.V.B.Deshpande
College of Commerce, Mulund (West), Mumbai-
400080
[8] Berkeley.edu:
http://people.ischool.berkeley.edu/~buckland/papers/an
alysis/node1.html
[9] M. Smith, C. Welthy, and D. McGuiness.OWL Web
Ontology Language Guide.Technical report, World
Wide Web Consortium, 2004.
http://www.w3.org/TR/2004/ REC-owl-guide-
20040210/ [10] Indexing:https://www.springer.com
[11] J.F. Sequeda, D.P. Miranker, A pay-as-you-go
methodology for ontology-based data access, IEEE
Internet Comput. 21 (2) (2017) 92-96.
[12] M. Rodriguez-Muro, R. Kontchakov, M.
Zakharyaschev, Ontology-based dataaccess: ontop of
databases, in: International Semantic Web
Conference,Springer, 2013, pp. 558-573.
[13] Vise, David A. (2004-12-03). "Agencies Find What
They're Looking For". The Washington Post.
Retrieved 2010-05-22.