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A Run-Time Detector of Hardworking E-Learners with Underperformance

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Part of the book series: Advances in Intelligent Systems and Computing ((AISC,volume 804))

Abstract

Due to the lack of a face-to-face interaction between teachers and students in virtual courses, the identification of at-risk learners among those who appear to show normal activity is a challenge. Particularly, we refer to those who are very active in the Learning Management System, but their performance is low in comparison with their peers. To fix this issue, we describe a method aimed to discover learners with an inconsistent performance with respect to their activity, by using an ensemble of classifiers. Its effectiveness will be shown by its application on data from virtual courses and its comparison with the results achieved by two well-known outlier detection techniques.

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References

  1. Hara, N., Kling, R.: Student distress in web-based distance education. Educause Q. 24(3), 68–69 (2001)

    Google Scholar 

  2. Giesbersa, B., et al.: Investigating the relations between motivation, tool use, participation, and performance in an e-learning course using web-videoconferencing. Comput. Hum. Behav. 29(1), 285–292 (2013)

    Article  Google Scholar 

  3. Romero, C., Ventura, S.: Data mining in education. Wiley Interdisc. Rew. Data Mining and Knowl. Disc. 3, 12–27 (2013)

    Article  Google Scholar 

  4. Wolff, A., Zdrahal, Z., et al. : Developing predictive models for early detection of at-risk students on distance learning modules. In: 4th International Conference on Learning Analytics and Knowledge, pp. 24–28. Indianapolis (2014)

    Google Scholar 

  5. Xing, W., Guo, R., et al.: Participation-based student final performance prediction model through interpretable genetic programming: integrating learning analytics, edm and theory. Comput. Hum. Behav. 47, 168–181 (2015)

    Article  Google Scholar 

  6. Koprinska, I., Stretton, J., Yacef, K.: Predicting student performance from multiple data sources. In: International Conference on Artificial Intelligence in Education, pp. 678–681 (2015)

    Google Scholar 

  7. Frenay, B., Verleysen, M.: Classification in the presence of label noise: a survey. IEEE Trans. Neural Netw. Learn. Syst. 25(5), 845–869 (2014)

    Article  Google Scholar 

  8. Rokach, L.: Ensemble-based classifiers. Artif. Intell. Rev. 33, 1–39 (2010)

    Article  Google Scholar 

  9. Smith, M., et al.: The robustness of majority voting compared to filtering misclassified instances in supervised classification. Artif. Intell. Rev. 49, 105–130 (2017)

    Article  Google Scholar 

  10. Breunig, M.M., Kriegel, H.P., et al.: LOF: identifying density-based local outliers. In: ACM International Conference on Management of Data, Dallas, pp. 93–104 (2000)

    Google Scholar 

  11. Saad, M.K., Hewahi, N.M.: A comparative study of outlier mining and class outlier mining. Comput. Sci. Lett. 1(1) (2009)

    Google Scholar 

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Acknowledgements

This work has been partially funded by the Spanish Government under grant TIN2014-56158-C4-2-P (M2C2).

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Correspondence to Diego García-Saiz .

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García-Saiz, D., Zorrilla, M., de la Vega, A., Sánchez, P. (2019). A Run-Time Detector of Hardworking E-Learners with Underperformance. In: Di Mascio, T., et al. Methodologies and Intelligent Systems for Technology Enhanced Learning, 8th International Conference. MIS4TEL 2018. Advances in Intelligent Systems and Computing, vol 804. Springer, Cham. https://doi.org/10.1007/978-3-319-98872-6_3

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