1. Abadeh S, M., Mahmoudi, S., TaherParvar, M. (2012). Applied Data Mining, Tehran:Niaz Danesh Publications.
2. Abdelrazeq, A., Janßen, D., Tummel, C., Jeschke, S., & Richert, A. (2016). Sentiment Analysis of Social Media for Evaluating Universities. In Automation, Communication and Cybernetics in Science and Engineering 2015/2016 (pp. 233-251). Springer, Cham. [
DOI:10.1007/978-3-319-42620-4_19]
3. Abdous, M., He, W., & Yen, C.-J. (2012). Using data mining for predicting relationships between online question theme and final grade. Educational Technology & Society, 15(3),77-88.
4. Adamopoulos, P. (2013). What makes a great MOOC? An interdisciplinary analysis of student retention in online courses.
5. Alban, M., & Mauricio, D. (2019). Predicting university dropout through data mining: A Systematic Literature. Indian Journal of Science and Technology, 12(4), 1-12. [
DOI:10.17485/ijst/2019/v12i4/139729]
6. Balahadia, F. F., Fernando, M. C. G., & Juanatas, I. C. (2016, May). Teacher's performance evaluation tool using opinion mining with sentiment analysis. In 2016 IEEE Region 10 Symposium (TENSYMP) (pp. 95-98). IEEE. [
DOI:10.1109/TENCONSpring.2016.7519384]
7. Barracosa, J., & Antunes, C. (2011). Anticipating teachers' performance. Proc. of Int. W. on Knowl. Discovery on Educational Data (KDDinED@ KDD). ACM.
8. Baruah, T. D. (2012). Effectiveness of Social Media as a tool of communication and its potential for technology enabled connections: A micro-level study. International Journal of Scientific and Research Publications, 2(5), 1-10.
9. Chen, X., Vorvoreanu, M., & Madhavan, K. (2014). Mining social media data for understanding students' learning experiences. IEEE Transactions on Learning Technologies, 7(3), 246-259. [
DOI:10.1109/TLT.2013.2296520]
10. Federkeil, G. (2013). Internationale hochschulrankings-eine kritische bestandsaufnahme. Beiträge zur Hochschulforschung, 35(2), 34-48.
11. Garcia-Saiz, D., Palazuelos, C., & Zorrilla, M. (2014). Data mining and social network analysis in the educational field: An application for non-expert users. In Educational Data Mining (pp. 411-439). Springer, Cham. [
DOI:10.1007/978-3-319-02738-8_15]
12. Grljević, O., Bošnjak, Z., & Kovačević, A. (2020). Opinion mining in higher education: a corpus-based approach. Enterprise Information Systems, 1-26. [
DOI:10.1080/17517575.2020.1773542]
13. Haddi, E., Liu, X., & Shi, Y. (2013). The role of text pre-processing in sentiment analysis. Procedia Computer Science, 17, 26-32. [
DOI:10.1016/j.procs.2013.05.005]
14. Hisserich, J., & Primsch, J. (2010). Wissensmanagement in 140 Zeichen: Twitter in der Hochschullehre. Community of Knowledge (Hg.), Nächste Generation Wissensmanagement. Wie sich der Umgang mit Wissen und Kommunikation wandelt, 11(2010), 23-35. [In Germany]
15. Huang, S., & Fang, N. (2013). Predicting student academic performance in an engineering dynamics course: A comparison of four types of predictive mathematical models. Computers & Education, 61, 133-145 [
DOI:10.1016/j.compedu.2012.08.015]
16. Immaculate Mary, C., & Pushpavalli, R. (2017, November). Automation of Feedback Analysis for Educational Enhancement. In Proceedings of the International Conference on Intelligent Computing Systems (ICICS 2017-Dec 15th-16th 2017) organized by Sona College of Technology, Salem, Tamilnadu, India. [
DOI:10.2139/ssrn.3126655]
17. Jothi, A. J., Santiago, M. S., & Arockiam, L. (2016). A Methodological Framework to Identify the Students' Opinion using Aspect based Sentiment Analysis. Int. J. Eng. Res, 5. [
DOI:10.17577/IJERTV5IS020528]
18. Karami M. (2008). Application of data-mining and text-mining analyzer tools in agility on healthcare organizations. Jha, 10 (30):15-20. [In Perian]
19. Kechaou, Z., Ammar, M. B., & Alimi, A. M. (2011, April). Improving e-learning with sentiment analysis of users' opinions. In 2011 IEEE Global Engineering Education Conference (EDUCON) (pp. 1032-1038). IEEE. [
DOI:10.1109/EDUCON.2011.5773275]
20. Maragoudakis, M., Loukis, E., & Charalabidis, Y. (2011, August). A review of opinion mining methods for analyzing citizens' contributions in public policy debate. In International Conference on Electronic Participation (pp. 298-313). Springer, Berlin, Heidelberg. [
DOI:10.1007/978-3-642-23333-3_26]
21. Mathapati, S., & Manjula, S. H. (2017). Sentiment analysis and opinion mining from social media: A review. Global Journal of Computer Science and Technology.
22. Ortigosa, A., Martín, J. M., & Carro, R. M. (2014). Sentiment analysis in Facebook and its application to e-learning. Computers in human behavior, 31, 527-541. [
DOI:10.1016/j.chb.2013.05.024]
23. Ramesh, A., Goldwasser, D., Huang, B., Daumé III, H., & Getoor, L. (2013, December). Modeling learner engagement in MOOCs using probabilistic soft logic. In NIPS Workshop on Data Driven Education (Vol. 21, p. 62).
24. Ray, S., & Saeed, M. (2018). Applications of educational data mining and learning analytics tools in handling big data in higher education. In Applications of Big Data Analytics (pp. 135-160). Springer, Cham. [
DOI:10.1007/978-3-319-76472-6_7]
25. Saa, A. A. (2016). Educational Data Mining & Students' Performance Prediction. International Journal of Advanced Computer Science & Applications, 1, 212-220.
26. Shelke, N. M., Deshpande, S., & Thakre, V. (2012). Survey of techniques for opinion mining. International Journal of Computer Applications, 57(13), 0975-8887.
27. Siemens, G., & Long, P. (2011). Penetrating the fog: Analytics in learning and education. EDUCAUSE review, 46(5), 30.
28. Song, D., Lin, H., & Yang, Z. (2007, September). Opinion mining in e-learning system. In 2007 IFIP International Conference on Network and Parallel Computing Workshops (NPC 2007) (pp. 788-792). IEEE. [
DOI:10.1109/NPC.2007.51]
29. Smeureanu, I., & Bucur, C. (2012). Applying supervised opinion mining techniques on online user reviews. Informatica Economică, 16(2), 81-91.
30. Wen, M., Yang, D., & Rose, C. (2014, July). Sentiment Analysis in MOOC Discussion Forums: What does it tell us?. In Educational data mining 2014.