Call for Paper - September 2022 Edition
IJCA solicits original research papers for the September 2022 Edition. Last date of manuscript submission is August 22, 2022. Read More

Evaluation of Student Performance for Future Perspective in terms of Higher Studies using Fuzzy logic Approach

Print
PDF
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Year of Publication: 2019
Authors:
Gargi Agarwal, Sakshi Gupta, Ashish Agrawal
10.5120/ijca2019918640

Gargi Agarwal, Sakshi Gupta and Ashish Agrawal. Evaluation of Student Performance for Future Perspective in terms of Higher Studies using Fuzzy logic Approach. International Journal of Computer Applications 181(50):9-14, April 2019. BibTeX

@article{10.5120/ijca2019918640,
	author = {Gargi Agarwal and Sakshi Gupta and Ashish Agrawal},
	title = {Evaluation of Student Performance for Future Perspective in terms of Higher Studies using Fuzzy logic Approach},
	journal = {International Journal of Computer Applications},
	issue_date = {April 2019},
	volume = {181},
	number = {50},
	month = {Apr},
	year = {2019},
	issn = {0975-8887},
	pages = {9-14},
	numpages = {6},
	url = {http://www.ijcaonline.org/archives/volume181/number50/30497-2019918640},
	doi = {10.5120/ijca2019918640},
	publisher = {Foundation of Computer Science (FCS), NY, USA},
	address = {New York, USA}
}

Abstract

Fuzzy logic has been used for solving various problems of computer science field and many other fields. Fuzzy logic is very useful when it comes to the problem where we need to decide and find the values ranging between 0 and 1 or any other specific range. A student may consider different courses if he/she decides to go for higher studies. Here in this paper authors has used the fuzzy logic to evaluate the correct higher study field for a student. The parameters to consider for evaluation were engineering subject marks which are classified into two fields engineering & management to analyze the future perspective in terms of higher studies.

References

  1. Maria Samarakou, Pantilis Prentakis, 2017.Application of fuzzy logic for assesment of Engineering students. IEEE Global Engineering Education Conference.
  2. Oguzhan Ozdemir,Ahmer Tekin, 2016.Evalution of the Presentation Skills of the pre-service via fuzzy logic.Elsevier.
  3. Alibek Barlybayev, Altynbek Sharipbay, Gulden Ulyukova, Talgat Sabyrov, Bn atyrkh Kuzenbayeva,2016. Student’s performance evaluation by fuzzy logic.Elsevier
  4. Meenakshi, Pankaj Nagar,2015.Application of Fuzzy Logic for Evaluation of Academic Performance of Students of Computer Application Course. International Journal for Research in Applied ScienceEngineering Technology
  5. Zehra Yıldız, Fevzi Baba, 2014.Evaluation of Student Performance in Laboratory Applications using FuzzyDecision Support System Model”IEEE Global Engineering Education Conference.
  6. Shruti S Jamsandekar, R.R Mudholkar,2013. Performance Evaluation by Fuzzy Inference Technique. International Journal of Soft Computing and Engineering.
  7. SuvarnaPatil, Ayesha Mulla ,R.R. Mudholkar,2012. Best Student Award A FuzzyEvaluation Approach.International Journal of Computer Science and Communication.
  8. RamjeetSinghYadav,Vijendra Pratap Singh, 2011. Modeling Academic Performance Evaluation Using Soft Computing Techniques: A Fuzzy Logic Approach.International Journal on Computer Science and Engineering .
  9. Neetesh Saxena1, Kajal Kaushal Saxena,2010.Fuzzy Logic Based Students Performance Analysis Model for Educational Institutions.IMS Engineering College.
  10. Gokhan Gokmena , Tahir Çetin Akincib, Mehmet Tekta, Nevzat Onatc, Gokhan Kocyigita, Necla Tekta, 2010.Evaluation of student performance in laboratory applications using fuzzy logic. Elesiver.
  11. Ibrahim Saleh, Seong-in Kim,2009. A fuzzy system for evaluating students’ learning achievement” Elesiver.
  12. Timothy J.Ross, 2013.Fuzzy logic with engineering applications, Wiley.
  13. S.N. Sivanandam, S.Sumathi, & S.N. Deepa, 2007. Introduction to fuzzy logic using matlab, Springer.
  14. Guanrong Chen &Trung Tat Pham, 2001. Introduction to fuzzy logic ,CRC Press.
  15. Andrea Trevino,’ Introduction to K-Means Clustering’, 2016[online].Available:-https://www.datascience.com/blog/k-means-clustering.[Accessed:12-Jun-2016].

Keywords

Fuzzy Logic, Engineering, Future Perspective, Student