Impact of Fuzzy Logic in Object-Oriented Database Through Blockchain

Main Article Content

Eesha Mishra
Santosh Kumar
Shivam Awasthi

Abstract

In this article, we show that applying fuzzy reasoning to an object-arranged data set produces noticeably better results than applying it to a social data set by applying it to both social and object-situated data sets. A Relational Data Base Management System (RDBMS) product structure offers a practical and efficient way to locate, store, and retrieve accurate data included inside a data collection. In any case, clients typically have to make vague, ambiguous, or fanciful requests. Our work allows clients the freedom to utilise FRDB to examine the database in everyday language, enabling us to provide a range of solutions that would benefit clients in a variety of ways. Given that the degree of attributes in a fuzzy knowledge base goes from 0 to 1, the term "fuzzy" was coined. This is due to the base's fictitious formalization's reliance on fuzzy reasoning. In order to lessen the fuzziness of the fuzzy social data set as a result of the abundance of uncertainty and vulnerabilities in clinical medical services information, a fuzzy article located information base is designed here for the Health-Care space. In order to validate the presentation and sufficiency of the fuzzy logic on both data sets, certain fuzzy questions are thus posed of the fuzzy social data set and the fuzzy item-situated information base..

Article Details

How to Cite
Mishra, E. ., Kumar, S. ., & Awasthi, S. . (2023). Impact of Fuzzy Logic in Object-Oriented Database Through Blockchain. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9s), 139–145. https://doi.org/10.17762/ijritcc.v11i9s.7405
Section
Articles

References

Kumari S. and Sonia, “Fuzzy RDBMS Design: SQL Add-On”, International Journal of Advanced Research in Computer Engineering & Technology, Volume 2, No 5, pp. 1861-1865, May 2013.

Lu Y., Ma T., Yin C., Xie X., Tian W. and Zhong S., “Implementation of the Fuzzy C-Means Clustering Algorithm in Meteorological Data”, International Journal of Database Theory and Application, Vol.6, No.6, pp.1-1, 2013.

Krishnaian V., Narsimha G. and Chandra S. N., “Heart Disease Prediction System Using Data Mining Techniques and Intelligent Fuzzy Approach: A Review”, International Journal of Computer Applications, Vol. 136, Issue 2, pp. 43-51, 2016.

Gafnayak K. K. and Panda A., “Implementation of Fuzzy Association Rule Mining for Student Performance Evaluation”, IOSR Journal of Computer Engineering (IOSR-JCE),Volume 19, Issue 6, Ver. IV, PP 79-82, 2017.

Singh S. K., Wayal G. and Sharma N., “ A Review: Data Mining with Fuzzy Association Rule Mining, International Journal of Engineering Research & Technology, Vol. 1, Issue 5, pp. 1-4, 2012.

Kottam S. and Paul V., “A Study on Applications of Fuzzy Set Theory in Datamining”, International Journal of Scientific & Engineering Research, Volume 5, Issue 2, pp. 16-22, February-2014.

Sharma A., Sharma M. K. and Dwivedi R. K., “Literature Review and Challenges of Data Mining Techniques for Social Network Analysis”, Advances in Computational Sciences and Technology, Volume 10, Issue 5, pp. 1337-1354, 2017.

Ceruto T., Lapeira O., Tonch A., Plant C., Espin R. and Rosete A., “Mining medical data to obtain fuzzy predicates”, Springer-Verlag Berlin Heidelberg 2014.

Khatib E. J., Barco R., Go?mez-Andrades A., Mun?oz P. and Serrano I., “Data mining for fuzzy diagnosis systems in LTE networks”, Expert Systems with Applications, Available on http://dx.doi.org/10.1016/j.eswa.2015.05.031, 2015.

Raut B. A., “Neuro-fuzzy, GA-Fuzzy, Neural-Fuzzy-GA: A Data Mining Technique for Optimization”, International Journal of Computer Science and Software Engineering Volume 3, issue 1, pp. 1-9, 2017.

Ahmed Abdullah Khalil, Maytham Mustafa Hammood, Awni M. Gaftan. (2023). Round S-Boxes Development for Present-80 Lightweight Block Cipher Encryption Algorithm. International Journal of Intelligent Systems and Applications in Engineering, 11(2s), 381–394. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2734

OPREA M., “On the Use of Data-Mining Techniques in Knowledge-Based Systems”, Economy Informatics, Vo. 1, Issue 4, pp. 21-24, 2006.

Hana J., Nishiob S., Kawanoc H. and Wanga W., “Generalization-based data mining in object-oriented databases using an object cube model” , Data & Knowledge Engineering, Vol. 25, pp. 55-97, 1998.

Saurkar A. V. and Gode S. A., “Association Rule Mining with Fuzzy Logic: an Overview”, International Journal of Science and Research, Vol. 4, Issue 6, pp. 823-827, 2015.

Zadeh L.A., Fuzzy Sets, Information and control, Vol. 8, pp. 338-353, 1965.

Galindo J., Urrutia A. and Piattini M., “Fuzzy Databases: Modeling, Design and Implementation”, Idea Group Publishing.

Ma Z. M. and Shen D., “Modeling Fuzzy Information in the IF2O and Object-Oriented Data Models”, Journal of Intelligent and Fuzzy Systems, Vol.17, pp. 597-612.

Cross V., deCaluwe R. and Vangysehem N., “A Perspective from the Fuzzy Object Data Management Group,” 6th IEEE, International Conference on Fuzzy Systems Barcelona, Spain, pp. 721-728, 1997.

Yazici A. and Cinar A., “Conceptual Design of Fuzzy Object-Oriented Database”, Second International Conference on Knowledge-Based Intelligent Electronic Systems, IEEE, pp. 299-305, 1998.

Yuko Ohno and Yasushi Matsumura, “Unified Modeling Language (UML) for Hospital-based Cancer Registration Processes”, Asian Pacific journal of cancer prevention, Vol. 9, pp.789-796, 2008.

Saxena V., Ansari A. G. and Kumar K., “Data Cube Representation of Patient Registration System through UML”, International Journal of Computer and Network Security, VOL. 8, No.10, pp. 319-323, 2008.

Ma Z. M. and Yan L., “A Literature Overview of Fuzzy Conceptual Data Modeling”, Journal of Information Science and Engineering, Vol. 26, pp. 427- 439, 2010.

Shukla P. K., Darbari M., Singh V. K., and Tripathi S. P., “A Survey of Fuzzy Techniques in Object- Oriented Databases”, International Journal of Scientific and Engineering Research, Vol. 2, pp. 1-11, 2011.

Saxena V. and Kumar S., “Object-Oriented Database Representation through UML”, International Journal on Computer Science and Engineering, Singapore, Vol. 3 No. 1, pp. 440-444, 2011.

Ephzibah E.P. and Sundarapandian V., “A Neuro Fuzzy Expert System for Heart Disease Diagnosis” Computer Science & Engineering: An International Journal (CSEIJ), Vol.2, No.1, pp. 17-23, 2012.

Saxena V. and Kumar S., “Object-Oriented Database Connectivity for Hand Held Devices”,Journal of Software Engineering and Applications, USA, Vol. 5 No. 5, pp. 314-320, 2012.

Rui-Yang Chen, “Fuzzy SQL Query in Fuzzy Object-Oriented Database”, Journal of Data and Information Processing, Vol. 1, pp. 9-18, 2013.

Singh S., Agarwal K., and Ahmad J., “Conceptual Modeling In Fuzzy Object oriented Databases Using Unified Modeling Language”, International Journal of Latest Research in Science and Technology, Vol. 3, PP. 174-178, 2014.

Sudhakar E. K. and Manimekalai M., “A Novel Methodology for Diagnosing the Heart Disease Using Fuzzy Database”, International Journal of Research in Engineering and Technology Vol. 4, pp.84-89, 2015.

Akinyokun O. C., Iwasokun G. B., Arekete S. A. and Samuel R. W., “Fuzzy logic-driven expert system for the diagnosis of heart failure disease”, Artificial Intelligence Research, Vol. 4, No. 1, pp. 12-21, 2015.

Gamal M. M., Ahmed E. A., Hefny A. H. and El-Moneim A. M., “A literature survey on mapping between fuzzy XML databases and relational or object oriented databases”, Third World Conference on Complex Systems (WCCS), 23-25 Nov. 2015, Marrakech, Morocco.

Israni P. and Israni D., “An indexing technique for fuzzy object oriented database using R tree index”, International Conference on Soft Computing and its Engineering Applications (icSoftComp), 1-2 Dec. 2017, Changa, India.

Zhang L., Sun J., Su S., Liu Q. and Liu J., “Uncertainty Modelling of Object-Oriented Biomedical Information in HBase”, IEEE Access, Vol. 8, pp. 51219 – 51229, March 2020.

Wedashwara W., Mabu S., Obayashi M., and Kuremoto T., “ Evolutionary Rule Based Clustering for Making Fuzzy Object Oriented Database Models”,4th International Congress on Advanced Applied Informatics, 12-16 July 2015, Okayama, Japan.

Bai L., Jia Z., and Liu J., “ Reengineering Object-Oriented Fuzzy Spatiotemporal Data into XML”, IEEE Access, Vol. 6, pp. 12686 – 12699, February 2018.

Jandoubi S., Bahri A., ; Yacoubi-Ayadi N., Chakhar S; and Labib A, “Enhanced Fuzzy Object- Relational database Model for efficient implementation of the FSM” IEEE International Conference on Fuzzy Systems (FUZZ-IEEE), 2-5 Aug. 2015, Istanbul, Turkey.

Thang V. D., and Nhut X. N., “Membership function in fuzzy object-oriented databases” International Conference on Advanced Technologies for Communications (ATC), 14-16 Oct. 2015, Ho Chi Minh City, Vietnam.

Medina M. J. Barranco D. C. and Pons O., “Indexes for Necessity Queries. Implementation and Performance Evaluation on a Fuzzy Object-Relational Database Management System”, IEEE International Conference on Fuzzy Systems (FUZZ-IEEE), 8-13 July 2018, Rio de Janeiro, Brazil