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2019 | OriginalPaper | Chapter

Students’ Performance Prediction Model Using Meta-classifier Approach

Authors : Hasniza Hassan, Syahid Anuar, Nor Bahiah Ahmad

Published in: Engineering Applications of Neural Networks

Publisher: Springer International Publishing

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Abstract

Students’ performance is vitally important at all stages of education, particularly for Higher Education Institutions. One of the most important issues is to improve the performance and quality of students enrolled. The initial symptom of at-risks’ students need to be observed and earlier preventive measures are required to be carried out so as to determine the cause of students’ dropout rate. Hence, the purpose of this research is to identify factors influencing students’ performance using educational data mining techniques. In order to achieve this, data from different sources is employed into a single platform for pre-processing and modelling. The design of the study is divided into 6 different phases (data collection, data integration, data pre-processing such as cleaning, normalization, and transformation, feature selection, patterns extraction and model optimization as well as evaluation. The datasets were collected from a students’ information system and e-learning system from a public university in Malaysia, while sample data from the Faculty of Engineering were used accordingly. This study also employed the use of academic, demographical, economical and behaviour e-learning features, in which 8 different group models were developed using 3 base-classifiers; Decision Tree, Artificial Neural Network and Support Vector Machine, and 5 multi-classifiers; Random Forest, Bagging, AdaBoost, Stacking and Majority Vote classifier. Finally, the highest accuracy of the classifier model was optimized. At the end, new Students’ Performance Prediction Model was developed. The result proves that combination demographics with behaviour using a meta-classifier model with optimized hyper parameter produced better accuracy to predict students’ performance.

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Literature
go back to reference Adejo, O.W., Connolly, T., Adejo, O.W., Connolly, T.: ensemble approach Predicting student academic performance using multi-model heterogeneous ensemble approach. J. Appl. Res. High. Educ. 10(1), 61–75 (2018)CrossRef Adejo, O.W., Connolly, T., Adejo, O.W., Connolly, T.: ensemble approach Predicting student academic performance using multi-model heterogeneous ensemble approach. J. Appl. Res. High. Educ. 10(1), 61–75 (2018)CrossRef
go back to reference Ahmad, F., Ismail, N.H., Aziz, A.A.: The prediction of students’ academic performance using classification data mining techniques. Appl. Math. Sci. 9(129), 6415–6426 (2015) Ahmad, F., Ismail, N.H., Aziz, A.A.: The prediction of students’ academic performance using classification data mining techniques. Appl. Math. Sci. 9(129), 6415–6426 (2015)
go back to reference AL-Malaise, A., Malibari, A., Alkhozae, M.: Students performance prediction system using multi agent data mining technique. Int. J. Data Min. Knowl. Manag. Process (2014) AL-Malaise, A., Malibari, A., Alkhozae, M.: Students performance prediction system using multi agent data mining technique. Int. J. Data Min. Knowl. Manag. Process (2014)
go back to reference Amrieh, E.A., Hamtini, T., Aljarah, I.: Mining educational data to predict student’s academic performance using ensemble methods. Int. J. Database Theor. Appl. 9(8), 119–136 (2016)CrossRef Amrieh, E.A., Hamtini, T., Aljarah, I.: Mining educational data to predict student’s academic performance using ensemble methods. Int. J. Database Theor. Appl. 9(8), 119–136 (2016)CrossRef
go back to reference Anoopkumar, M., Zubair Rahman, A.M.J.Md.: Model of tuned J48 classification and analysis of performance prediction in educational data mining. Int. J. Appl. Eng. Res. 13(20), 14717–14727 (2018). ISSN 0973-4562 Anoopkumar, M., Zubair Rahman, A.M.J.Md.: Model of tuned J48 classification and analysis of performance prediction in educational data mining. Int. J. Appl. Eng. Res. 13(20), 14717–14727 (2018). ISSN 0973-4562
go back to reference Baker, S.J.R.: Data mining for education. Int. Encycl. Educ. (2010) Baker, S.J.R.: Data mining for education. Int. Encycl. Educ. (2010)
go back to reference Barhamzaid, Z.A.A., Alleyne, A.: Factors affecting student performance in the first accounting course in diploma program under political conflic. J. Educ. Prac. 9(24), 144–154 (2018) Barhamzaid, Z.A.A., Alleyne, A.: Factors affecting student performance in the first accounting course in diploma program under political conflic. J. Educ. Prac. 9(24), 144–154 (2018)
go back to reference Beemer, J., Spoon, K., He, L., Fan, J., Levine, R.A.: Ensemble learning for estimating individualized treatment effects in student success studies. Int. J. Artif. Intell. Educ. 28(3), 315–335 (2018)CrossRef Beemer, J., Spoon, K., He, L., Fan, J., Levine, R.A.: Ensemble learning for estimating individualized treatment effects in student success studies. Int. J. Artif. Intell. Educ. 28(3), 315–335 (2018)CrossRef
go back to reference Fernandes, E., Holanda, M., Victorino, M., Borges, V., Carvalho, R., Van Erven, G.: Educational data mining: predictive analysis of academic performance of public school students in the capital of Brazil. J. Bus. Res. 94, 335–343 (2018)CrossRef Fernandes, E., Holanda, M., Victorino, M., Borges, V., Carvalho, R., Van Erven, G.: Educational data mining: predictive analysis of academic performance of public school students in the capital of Brazil. J. Bus. Res. 94, 335–343 (2018)CrossRef
go back to reference Gudivada, V.N., Irfan, M.T., Fathi, E., Rao, D.L.: Cognitive Analytics: Going Beyond Big Data Analytics and Machine Learning. Handbook of Statistics, 1st edn. Elsevier B.V (2016) Gudivada, V.N., Irfan, M.T., Fathi, E., Rao, D.L.: Cognitive Analytics: Going Beyond Big Data Analytics and Machine Learning. Handbook of Statistics, 1st edn. Elsevier B.V (2016)
go back to reference Hossin, M., Sulaiman, M.N.: A review on evaluation metrics for data classification evaluations. Int. J. Data Min. Knowl. Manag. Process (IJDKP) 5(2), 1–11 (2015)CrossRef Hossin, M., Sulaiman, M.N.: A review on evaluation metrics for data classification evaluations. Int. J. Data Min. Knowl. Manag. Process (IJDKP) 5(2), 1–11 (2015)CrossRef
go back to reference Iam-On, N., Boongoen, T.: Improved student dropout prediction in Thai University using ensemble of mixed-type data clusterings. Int. J. Mach. Learn. Cyber. 8(2), 497–510 (2017)CrossRef Iam-On, N., Boongoen, T.: Improved student dropout prediction in Thai University using ensemble of mixed-type data clusterings. Int. J. Mach. Learn. Cyber. 8(2), 497–510 (2017)CrossRef
go back to reference Kavitha, G., Raj, L.: Educational data mining and learning analytics educational assistance for teaching and learning. Int. J. Comput. Organ. Trends 41(1), 21–25 (2017)CrossRef Kavitha, G., Raj, L.: Educational data mining and learning analytics educational assistance for teaching and learning. Int. J. Comput. Organ. Trends 41(1), 21–25 (2017)CrossRef
go back to reference Kondo, N., Okubo, M., Hatanaka, T.: Early detection of at-risk students using machine learning based on LMS log data. In: 2017 6th IIAI International Congress on Advanced Applied Informatics (IIAI-AAI), pp. 198–201 (2017) Kondo, N., Okubo, M., Hatanaka, T.: Early detection of at-risk students using machine learning based on LMS log data. In: 2017 6th IIAI International Congress on Advanced Applied Informatics (IIAI-AAI), pp. 198–201 (2017)
go back to reference Kostopoulos, G., Livieris, I.E., Kotsiantis, S., Tampakas, V.: CST-voting: a semi-supervised ensemble method for classification problems. J. Intell. Fuzzy Syst. 35(1), 99–109 (2018)CrossRef Kostopoulos, G., Livieris, I.E., Kotsiantis, S., Tampakas, V.: CST-voting: a semi-supervised ensemble method for classification problems. J. Intell. Fuzzy Syst. 35(1), 99–109 (2018)CrossRef
go back to reference Lopez Guarin, C.E., Guzman, E.L., Gonzalez, F.A.: A model to predict low academic performance at a specific enrollment using data mining. Revista Iberoamericana de Tecnologias del Aprendizaje 10(3), 119–125 (2015)CrossRef Lopez Guarin, C.E., Guzman, E.L., Gonzalez, F.A.: A model to predict low academic performance at a specific enrollment using data mining. Revista Iberoamericana de Tecnologias del Aprendizaje 10(3), 119–125 (2015)CrossRef
go back to reference Marbouti, F., Diefes-Dux, H.A., Madhavan, K.: Models for early prediction of at-risk students in a course using standards-based grading. Comput. Educ. 103, 1–15 (2016)CrossRef Marbouti, F., Diefes-Dux, H.A., Madhavan, K.: Models for early prediction of at-risk students in a course using standards-based grading. Comput. Educ. 103, 1–15 (2016)CrossRef
go back to reference Márquez-Vera, C., Cano, A., Romero, C., Noaman, A.Y.M., Mousa Fardoun, H., Ventura, S.: Early dropout prediction using data mining: a case study with high school students. Expert Syst. 33(1), 107–124 (2016)CrossRef Márquez-Vera, C., Cano, A., Romero, C., Noaman, A.Y.M., Mousa Fardoun, H., Ventura, S.: Early dropout prediction using data mining: a case study with high school students. Expert Syst. 33(1), 107–124 (2016)CrossRef
go back to reference Nam, S.J., Frishkoff, G., Collins-Thompson, K.: predicting students’ disengaged behaviors in an online meaning-generation task. IEEE Trans. Learn. Technol. 1382, 1–14 (2017) Nam, S.J., Frishkoff, G., Collins-Thompson, K.: predicting students’ disengaged behaviors in an online meaning-generation task. IEEE Trans. Learn. Technol. 1382, 1–14 (2017)
go back to reference Natek, S., Zwilling, M.: Student data mining solution-knowledge management system related to higher education institutions. Expert Syst. Appl. 41(14), 6400–6407 (2014)CrossRef Natek, S., Zwilling, M.: Student data mining solution-knowledge management system related to higher education institutions. Expert Syst. Appl. 41(14), 6400–6407 (2014)CrossRef
go back to reference Nunn, S., Avella, J.T., Kanai, T., Kebritchi, M.: Learning analytics methods, benefits, and challenges in higher education: a systematic literature review. Online Learn. 20(2), 13–29 (2016)CrossRef Nunn, S., Avella, J.T., Kanai, T., Kebritchi, M.: Learning analytics methods, benefits, and challenges in higher education: a systematic literature review. Online Learn. 20(2), 13–29 (2016)CrossRef
go back to reference Polikar, R., et al.: An ensemble based data fusion approach for early diagnosis of Alzheimer’s disease. Inf. Fusion 9(1), 83–95 (2008)CrossRef Polikar, R., et al.: An ensemble based data fusion approach for early diagnosis of Alzheimer’s disease. Inf. Fusion 9(1), 83–95 (2008)CrossRef
go back to reference Romero, C., Ventura, S.: Educational data mining: a review of the state of the art. IEEE Trans. Syst. Man Cybern. Part C (Appl. Rev.) 40(6), 601–618 (2010)CrossRef Romero, C., Ventura, S.: Educational data mining: a review of the state of the art. IEEE Trans. Syst. Man Cybern. Part C (Appl. Rev.) 40(6), 601–618 (2010)CrossRef
go back to reference Salini, A., Jeyapriya, U., College, S.M., College, S.M.: A majority vote based ensemble classifier for predicting students academic performance. Int. J. Pure Appl. Math. 118(24), 1–11 (2018) Salini, A., Jeyapriya, U., College, S.M., College, S.M.: A majority vote based ensemble classifier for predicting students academic performance. Int. J. Pure Appl. Math. 118(24), 1–11 (2018)
go back to reference Shahiri, A.M., Husain, W., Rashid, N.A.: A review on predicting student’s performance using data mining techniques. In: 2015 3rd Information Systems International Conference, pp. 414–422 (2015)CrossRef Shahiri, A.M., Husain, W., Rashid, N.A.: A review on predicting student’s performance using data mining techniques. In: 2015 3rd Information Systems International Conference, pp. 414–422 (2015)CrossRef
go back to reference Tamhane, A., Appleton, J.: Predicting student risks through longitudinal analysis. In: KDD, pp. 1544–1552 (2014) Tamhane, A., Appleton, J.: Predicting student risks through longitudinal analysis. In: KDD, pp. 1544–1552 (2014)
go back to reference Wanjau, S.K., Muketha, G.M.: Improving student enrollment prediction using ensemble classifiers. Int. J. Comput. Appl. Technol. Res. 7(03), 122–128 (2018) Wanjau, S.K., Muketha, G.M.: Improving student enrollment prediction using ensemble classifiers. Int. J. Comput. Appl. Technol. Res. 7(03), 122–128 (2018)
go back to reference Xu, J., Moon, K.H., Van Der Schaar, M.: A machine learning approach for tracking and predicting student performance in degree programs. IEEE J. Sel. Top. Signal Process. 11(5), 742–753 (2017)CrossRef Xu, J., Moon, K.H., Van Der Schaar, M.: A machine learning approach for tracking and predicting student performance in degree programs. IEEE J. Sel. Top. Signal Process. 11(5), 742–753 (2017)CrossRef
go back to reference Zollanvari, A., Kizilirmak, R.C., Kho, Y.H., Hernandez-Torrano, D.: Predicting students’ GPA and developing intervention strategies based on self-regulatory learning behaviors. IEEE Access 5, 23792–23802 (2017)CrossRef Zollanvari, A., Kizilirmak, R.C., Kho, Y.H., Hernandez-Torrano, D.: Predicting students’ GPA and developing intervention strategies based on self-regulatory learning behaviors. IEEE Access 5, 23792–23802 (2017)CrossRef
Metadata
Title
Students’ Performance Prediction Model Using Meta-classifier Approach
Authors
Hasniza Hassan
Syahid Anuar
Nor Bahiah Ahmad
Copyright Year
2019
DOI
https://doi.org/10.1007/978-3-030-20257-6_19

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