Predicting Student Academic Performance at Degree Level: A Case Study

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Author(s)

Raheela Asif 1,* Agathe Merceron 2 Mahmood K. Pathan 3

1. N.E.D University of Engineering & Technology /Department of Computer Science & I.T., Karachi, 75270, Pakistan

2. Beuth University of Applied Sciences /Department of Computer Science and Media, Berlin, 13353, Germany

3. Federal Urdu University of Arts, Science & Technology, Karachi, 75300, Pakistan

* Corresponding author.

DOI: https://doi.org/10.5815/ijisa.2015.01.05

Received: 16 May 2014 / Revised: 10 Sep. 2014 / Accepted: 15 Oct. 2014 / Published: 8 Dec. 2014

Index Terms

Educational Data Mining, Knowledge Discovery, Predicting Performance, Electronic Performance Support System, Pedagogical Policy, Classification, Decision Trees

Abstract

Universities gather large volumes of data with reference to their students in electronic form. The advances in the data mining field make it possible to mine these educational data and find information that allow for innovative ways of supporting both teachers and students. This paper presents a case study on predicting performance of students at the end of a university degree at an early stage of the degree program, in order to help universities not only to focus more on bright students but also to initially identify students with low academic achievement and find ways to support them. The data of four academic cohorts comprising 347 undergraduate students have been mined with different classifiers. The results show that it is possible to predict the graduation performance in 4th year at university using only pre-university marks and marks of 1st and 2nd year courses, no socio-economic or demographic features, with a reasonable accuracy. Furthermore courses that are indicators of particularly good or poor performance have been identified.

Cite This Paper

Raheela Asif, Agathe Merceron, Mahmood K. Pathan, "Predicting Student Academic Performance at Degree Level: A Case Study", International Journal of Intelligent Systems and Applications(IJISA), vol.7, no.1, pp.49-61, 2015. DOI:10.5815/ijisa.2015.01.05

Reference

[1]D. P. Acharjya ,D. Roy, and M.A. Rahaman, “Prediction of Missing Associations Using Rough Computing and Bayesian Classification,” International Journal of Intelligent Systems and Applications, vol. 11, pp. 1-13, 2012. DOI: 10.5815/ijisa.2012.11.01

[2]J. Han, and M. Kamber, Data Mining Concepts and Techniques, 2nd ed. San Francisco: Morgan Kaufmann, 2006, pp.5-7.

[3]G. Dekker, M. Pechenizkiy, and J. Vleeshouwers, “Predicting Students Drop Out: a Case Study,” 2nd International Conference on Educational Data Mining, ‎Proceedings. Cordoba, Spain, pp. 41-50, 2009.

[4]D. Delen, “A comparative analysis of machine learning techniques for student retention management,” Decision Support Systems, vol. 49, pp. 498–506, 2010.

[5]Z. J. Kovačić, “Predicting student success by mining enrolment data,” Research in Higher Education Journal, vol. 15, pp. 1–20, 2012.

[6]A. Wolff, Z. Zdrahal, A. Nikolov, and M. Pantucek, “Improving retention: predicting at-risk students by analysing clicking behaviour in a virtual learning environment,” Proceedings of the Third International Conference on Learning Analytics and Knowledge, pp. 145-149, 2013.

[7]E. Aguiar, N.V. Chawla, J. Brockman, G. A. Ambrose, V. Goodrich, “Engagement vs Performance: Using Electronic Portfolios to predict first semester engineering student retention,” International Conference on Learning Analytics and Knowledge, ACM, 2014.

[8]S. Valsamidis, and S. Kontogiannis, “E-Learning Platform Usage Analysis,” Interdisciplinary Journal of E-Learning and Learning Objects, vol. 7, pp. 185-204, 2011.

[9]A. Merceron, and K. Yacef, “Measuring Correlation of Strong Symmetric Association Rules in Educational Data,” In: Handbook of Educational Data Mining , edited by C. Romero, S. Ventura, M. Pechenizkiy & R.S.J.d. Baker, CRC Press, ISBN: 978-1-4398-0457-5, pp. 245 -256. 2010

[10]C. Romero, S. Ventura, M. Pechenizkiy, and R.S.J.d. Baker, Handbook of Educational Data Mining. CRC Press, 2010, ISBN: 978-1-4398-0457-5.

[11]C. Romero, and S. Ventura, “Educational Data Mining: A Review of the State of the Art,” IEEE transactions on Systems, Man and Cybernetics, vol. 40(6), pp.601-618, 2010.

[12]Z. Pardos, N. Hefferman, B. Anderson, and C. Hefferman, “The effect of Model Granularity on Student Performance Prediction Using Bayesian Networks,” Proceedings of the international Conference on User Modelling, Springer, Berlin, pp. 435-439, 2007

[13]E. Galy, C. Downey, and J. Johnson, “ The Effect of Using E-Learning Tools in Online and Campus-based Classrooms on Student Performance,” Journal of Information Technology Education, vol. 10, pp. 209-230, 2011.

[14]M. I. Lopez, R. Romero, V. Ventura, and J.M. Luna,” Classification via clustering for predicting final marks starting from the student participation in Forums,” In (Yacef, K., Zaïane, O., Hershkovitz, H., Yudelson, M., and Stamper, J. Hrsg.): Proceedings of the 5th International Conference on Educational Data Mining, Chania, Greece, June15-21, pp. 148-151 ,2012.

[15]S. Huang, N. Fang, “Predicting student academic performance in an engineering dynamics course: A comparison of four types of predictive mathematical models,” Computer and Education, pp. 133-145, 2013.

[16]P. Golding, S. McNamarah, “Predicting Academic Performance in the School of Computing & Information Technology (SCIT),” Proceedings of 35th ASEE /IEEE Frontiers in Education Conference, 2005.

[17]P. Golding, O. Donaldson, “Predicting Academic Performance”, Proceedings of 36th ASEE /IEEE Frontiers in Education Conference, 2006.

[18]J. Zimmermann, K. H. Brodersen, J. P. Pellet, E. August, J. M. Buhmann, “Predicting graduate-level performance from undergraduate achievements,” Proceedings of the 4th International Conference on Educational Data Mining, Eindhoven, the Netherlands. July 6-8, 2011.

[19]T. N. Nghe, P. Janecek, P. Haddawy, “A Comparative Analysis of Techniques for Predicting Academic Performance,” Proceedings of 37th ASEE /IEEE Frontiers in Education Conference, 2007.

[20]D. Kabakchieva , K. Stefanova, V. Kisimov, Analyzing University Data for Determining Student Profiles and Predicting Performance, Proceedings of the 4th International Conference on Educational Data Mining, Eindhoven, the Netherlands. July 6-8, 2011.

[21]D. Kabakchieva, Predicting Student Performance by Using Data Mining Methods for Classification, Cybernetics and Information Technologies, vol. 13, No. 1, pp. 61-72, 2013.

[22]S. Haykin, Neural Networks: A comprehensive Foundation. 2nd ed. Prentice Hall, Upper Saddle River, New Jersey, 1999, p.157, 171, 184.

[23]P. N. Tan, M. Steinbach, V. Kumar, Introduction to Data Mining. 1st ed. Pearson Addison Wesley, US ed edition, 2005, p. 148-149.

[24]B. Liu, Web Data Mining – Exploring Hyperlinks, Contents and Usage Data. Springer. 2011.

[25]R. Asif, A. Merceron, M. K. Pathan, “Mining Student’s Admission Data and Predicting Student’s Performance using Decision Trees,” Proceedings of the 5th International Conference of Education, Research and Innovation, Madrid: Spain, pp. 5121-5129, 2012.

[26]RapidMiner retrieved from www.rapid-i.com.