CFP last date
20 December 2024
Reseach Article

Fuzzy logic based data Queries in Native Relational Database Model

Published on May 2012 by Amit Sangwan, Payal Goyal, Nisha Chopra, Gunjan Sharma
National Workshop-Cum-Conference on Recent Trends in Mathematics and Computing 2011
Foundation of Computer Science USA
RTMC - Number 11
May 2012
Authors: Amit Sangwan, Payal Goyal, Nisha Chopra, Gunjan Sharma
15ac75b3-a941-4cc3-8f8b-2d2e1b506ecc

Amit Sangwan, Payal Goyal, Nisha Chopra, Gunjan Sharma . Fuzzy logic based data Queries in Native Relational Database Model. National Workshop-Cum-Conference on Recent Trends in Mathematics and Computing 2011. RTMC, 11 (May 2012), 1-5.

@article{
author = { Amit Sangwan, Payal Goyal, Nisha Chopra, Gunjan Sharma },
title = { Fuzzy logic based data Queries in Native Relational Database Model },
journal = { National Workshop-Cum-Conference on Recent Trends in Mathematics and Computing 2011 },
issue_date = { May 2012 },
volume = { RTMC },
number = { 11 },
month = { May },
year = { 2012 },
issn = 0975-8887,
pages = { 1-5 },
numpages = 5,
url = { /proceedings/rtmc/number11/6698-1092/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 National Workshop-Cum-Conference on Recent Trends in Mathematics and Computing 2011
%A Amit Sangwan
%A Payal Goyal
%A Nisha Chopra
%A Gunjan Sharma
%T Fuzzy logic based data Queries in Native Relational Database Model
%J National Workshop-Cum-Conference on Recent Trends in Mathematics and Computing 2011
%@ 0975-8887
%V RTMC
%N 11
%P 1-5
%D 2012
%I International Journal of Computer Applications
Abstract

Fuzzy logic based data Queries in Native Relational Database Model. IJCA Proceedings on National Workshop-Cum-Conference on Recent Trends in Mathematics and Computing 2011 RTMC(11):-Fuzzy relational database was proposed for dealing with imprecise data or fuzzy information in a relational database .The use of fuzzy sets and fuzzy logic to extend existing database models to include these possibilities has been utilized since the 1980s. Conventional relational database systems are based on crisp data, which is precise. This paper deals with the application of fuzzy logic in a relational database environment with the objective of capturing more meaning of the data and give several points in which this research and implementation can be continued and extended, contributing to better understanding of fuzzy database concepts and techniques

References
  1. B. Buckles, F. Petry: A Fuzzy Representation of Data for Relational Databases. Fuzzy Sets and Systems, 7 (3), 1982, pp. 213 226.
  2. P. Cintula, P. Hájek, R. Hor?ik: Formal Systems of Fuzzy Logic and Their Fragments. Annals of Pure and Applied Logic, 150, 2007, pp. 40-65.
  3. Bosc, P. & Pivert, O. (1995). ”SQLf: A Relational Database Language for Fuzzy Querying.” IEEE Transactions on Fuzzy Systems, 3, 1-17.
  4. Mitchell, Tom M. “Introduction to Machine Learning” in Machine Learning (7th ed.), McGraw Hill Publishers, 2-
  5. BEERI, C., FAGIN, R., AND HOWARD, J. H. A complete axiomatization for functional and multivalued dependencies in database relations. In Proceedings of ACM SZGMOD International Conference on Management of Data (Toronto, 1977). ACM, New York, 1983,47-61.
  6. BEERI, C., AND VARDI, M. Y. Proof procedure for data dependencies. J. ACM 29,4 (Oct. 19821.
  7. Zadeh, L. A. (1965). “Fuzzy Sets.” Information and Control, 8, 338-353.
  8. CHANG, S. K., AND KE, J. S. Database skeleton and its application to fuzzy query translation. IEEE Trans. Softw. Eng. SE-4 (1978), 31-43.
  9. CODD, E. F. Extending the database relational model to capture more meaning. ACM Trans. Database Syst. 4,4 (Dec. 1979), 397-434.
  10. Wang, Li-Juan & Wang, Xi-Zhao & Ha, Ming-Hu & Yin-Shan, Mining the Weights of Similarity Measure Through Learning.
  11. Tashiro, H. & Ohki, N. & Yokoyama, T. & Matsushita, Y., Managing Subjective Information in Fuzzy Database Systems, 156 – 161.
  12. Bilgic, Taner & Turksen, I.B, Measurement of membership functions: Theoretical and Empirical work, 17 – 21.
  13. Chameau, J. L. & Santamarina, J. C. (1987a), Membership Part I: Comparing Methods of Measurement, 287-301.
Index Terms

Computer Science
Information Sciences

Keywords

Fuzzy relational database relational operator fuzzy sets fuzzy logic