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Learning Analytics
in the world of Big Data
Professor AI Cristea
EMadrid LALN Seminar 15/01/2021
https://its2021.iis-international.org/
deadline on January 31, 2021
https://tinyurl.com/y683abty
What is Learning Analytics?
• Using Student’s ‘Big Data’ to Improve
Teaching (Rafael Scapin, Dawson
College)
• ”collecting traces that learners leave
behind and using those traces to
improve learning.” (Eric Duval, Cath
Univ of Leuven)
• measurement, collection, analysis and
reporting of data about learners and
their contexts, for purposes of
understanding and optimising learning
and the environments in which it
occurs (SoLAR)
Learning Analytics Definitions: differences?
• Using Student’s ‘Big Data’ to Improve
Teaching (Rafael Scapin, Dawson
College)
• ”collecting traces that learners leave
behind and using those traces to
improve learning.” (Eric Duval, Cath
Univ of Leuven)
• measurement, collection, analysis and
reporting of data about learners and
their contexts, for purposes of
understanding and optimising learning
and the environments in which it
occurs (SoLAR)
Societies, Conferences
• Society for Learning Analytics and Research (SoLAR)
• International Educational Data Mining Society (IEDMS)
• Learning Analytics Conference (LAK)
• Educational Data Mining Conference (EDM)
Computation
6
Learning
7
Stakeholders of LA
• Governments, Professional Bodies
• Universities, Institutions (bodies of education)
• Groups: classroom, learning groups, etc.
• Teachers, Academics, Administrators
• Students
• Researchers
micro, meso and macro levels
Why LA?: To personalise education
Personalised Learning
10
Early Dropout Prediction for Programming Courses supported by Online Judges (AIED’19)
Earliest predictor of dropout in MOOCs: a longitudinal study of FutureLearn courses. (ISD 2018)
How is learning fluctuating? FutureLearn MOOCs fine-grained temporal Analysis and Feedback to Teachers (ISD’18)
Demographic Indicators Influencing Learning Activities in MOOCs: Learning Analytics of FutureLearn Courses (ISD’18)
LA Types
Main
Technologies
for LA
11
Main Methodologies
• Statistics
• Data Mining
• Machine Learning
• Network Analysis
• Visualisation
SOCIAL WEB
EDUCATION
SEMANTIC
PERSONALISATION
DATA
GAMIFICATION
CUSTOMISATION
VISUALISATION
HEALTH
COMMERCE
WEB
13
LA & EDM
14
15
Evolution of EDM and LA references in Google Scholar
Linan, Perez: http://rusc.uoc.edu/rusc/ca/index.php/rusc/article/view/v12n3-calvet-juan/2746.html
Temporal Sentiment Analysis of Learners: Public Versus
Private Channels in a Women-in-Tech Conversion Course
J. Yu et al., "Temporal Sentiment Analysis of Learners: Public Versus Private Social
Media Communication Channels in a Women-in-Tech Conversion Course," 2020 15th
International Conference on Computer Science & Education (ICCSE), Delft,
Netherlands, 2020, pp. 182-187, doi: 10.1109/ICCSE49874.2020.9201631.
inductive and
transductive
transfer
learning
applied over
public and
private
channel data
Alamri A., Sun Z., Cristea A.I., Senthilnathan G., Shi L., Stewart C. (2020) Is MOOC Learning Different for Dropouts? A
Visually-Driven, Multi-granularity Explanatory ML Approach. In: Kumar V., Troussas C. (eds) Intelligent Tutoring
Systems. ITS 2020. Lecture Notes in Computer Science, vol 12149. Springer, Cham. https://doi.org/10.1007/978-3-030-
49663-0_42
Result (Bird eye view)
2020
Figure 1: Learning pattern of dropout learners for Big Data course (bird eye view)
Figure 2: Learning pattern of completers learners for Big Data course (bird eye view)
Result ( Fish eye view)
2121
Figure 1: Learning pattern of completers for Shakespeare courseFigure 1: Learning pattern of completers for Shakespeare course (fish eye view)
Figure 2: Learning pattern of dropout learners for Shakespeare course (fish eye view)
Result ( statistical analysis)
➢ Learning paths of two groups of learners are statistical significantly different
2222
Table 2: P-values of linear and catch-up learning activities
Result
➢ Learners are more likely to drop out after articles and
videos
2323
Figure 3: Number of dropout/topic: a) first run b) second run
Result
➢ 17.1% dropout transfer among quizzes in Babies in Mind
➢ Nearly one-quarter of dropout learners lose interests after reading papers in
Big Data
2424
Figure 4: Babies in Mind (left) & Big Data (right): catch-up themes transition, dropout learners
25
➢ Predict early dropout of four course based on time spend on each activity by
two machine learning models: XGBoost and Gradient Boosting.
Table 3: Early Prediction (in first ten percentages of course) of Dropout
Result (machine learning)
Pereira, F. D., Oliveira, E. H., Oliveira, D. B., Cristea, A. I., Carvalho, L. S., Fonseca, S. C., Toda, A., Isotani, S. (2020). Using
learning analytics in the Amazonas: Understanding students’ behaviour in introductory programming. British Journal of
Educational Technology, 51(4), 955–972. https://doi.org/10.1111/bjet.12953
Effective and Ineffective Behaviours
Pereira, F. D., Oliveira, E. H., Oliveira, D. B., Cristea, A. I., Carvalho, L. S., Fonseca, S. C., Toda, A., Isotani, S. (2020). Using
learning analytics in the Amazonas: Understanding students’ behaviour in introductory programming. British Journal of
Educational Technology, 51(4), 955–972. https://doi.org/10.1111/bjet.12953
Effective and Ineffective Behaviours
Samuel Fonseca, Filipe Dwan Pereira, Elaine H. T. Oliveira, David Fernandes, Leandro Carvalho and Alexandra
Cristea "Automatic Subject-based Contextualisation of Programming Assignment Lists" In: Proceedings of
The 13th International Conference on Educational Data Mining (EDM 2020), Anna N. Rafferty, Jacob
Whitehill, Violetta Cavalli-Sforza, and Cristobal Romero (eds.) 2020, pp. 81 - 91
How can we extract the subject matter from programming problem statements,
to automatically match programming assignment lists to non-CS courses?
Samuel Fonseca, Filipe Dwan Pereira, Elaine H. T. Oliveira, David Fernandes, Leandro Carvalho and Alexandra
Cristea "Automatic Subject-based Contextualisation of Programming Assignment Lists" In: Proceedings of
The 13th International Conference on Educational Data Mining (EDM 2020), Anna N. Rafferty, Jacob
Whitehill, Violetta Cavalli-Sforza, and Cristobal Romero (eds.) 2020, pp. 81 - 91
Samuel Fonseca, Filipe Dwan Pereira, Elaine H. T. Oliveira, David Fernandes, Leandro Carvalho and Alexandra
Cristea "Automatic Subject-based Contextualisation of Programming Assignment Lists" In: Proceedings of
The 13th International Conference on Educational Data Mining (EDM 2020), Anna N. Rafferty, Jacob
Whitehill, Violetta Cavalli-Sforza, and Cristobal Romero (eds.) 2020, pp. 81 - 91
Samuel Fonseca, Filipe Dwan Pereira, Elaine H. T. Oliveira,
David Fernandes, Leandro Carvalho and Alexandra Cristea
"Automatic Subject-based Contextualisation of
Programming Assignment Lists" In: Proceedings of The 13th
International Conference on Educational Data Mining (EDM
2020), Anna N. Rafferty, Jacob Whitehill, Violetta Cavalli-
Sforza, and Cristobal Romero (eds.) 2020, pp. 81 - 91
Alrajhi L., Alharbi K., Cristea A.I. (2020) A Multidimensional Deep Learner Model of Urgent Instructor
Intervention Need in MOOC Forum Posts. In: Kumar V., Troussas C. (eds) Intelligent Tutoring Systems. ITS
2020. Lecture Notes in Computer Science, vol 12149. Springer, Cham. https://doi.org/10.1007/978-3-030-
49663-0_27
RQ1: Is there a relationship between the various dimensions of the
learners’ posts and their need for urgent instructor intervention?
RQ2: Does using several dimensions as features in addition to textual
data increase the model’s predictive power of the need for urgent
instructor intervention, when using deep learning?
Alrajhi L., Alharbi K., Cristea A.I. (2020) A Multidimensional Deep Learner Model of Urgent Instructor
Intervention Need in MOOC Forum Posts. In: Kumar V., Troussas C. (eds) Intelligent Tutoring Systems. ITS
2020. Lecture Notes in Computer Science, vol 12149. Springer, Cham. https://doi.org/10.1007/978-3-030-
49663-0_27
Toda, Armando M., et al. “How to Gamify Learning
Systems? An Experience Report Using the Design Sprint
Method and a Taxonomy for Gamification Elements in
Education.” Journal of Educational Technology & Society,
vol. 22, no. 3, 2019,
pp. 47–60. JSTOR,
www.jstor.org/stable/26896709.
A. M. Toda et al., "A Taxonomy of Game
Elements for Gamification in Educational
Contexts: Proposal and Evaluation," 2019 IEEE
19th International Conference on Advanced
Learning Technologies (ICALT), Maceió, Brazil,
2019, pp. 84-88, doi:
10.1109/ICALT.2019.00028.
Palomino, P. T., Toda, A., Oliveira, W., et al.
(2019). Exploring Content Game Elements to
Support Gamification Design in Educational
Systems : Narrative and Storytelling. In
Proceedings of the SBIE 2019.
AI: Top Down versus Bottom Up
36
(Student) usage data
Educational
Adaptive/Personalised System
Educators, Psychologists, Teachers,
etc.
Analytics: Student Success Science
37
Concluding Remarks
• LA for Big Data is here to stay
• We shall see more interesting methods from
various areas in the future
• The world has shifted to online work, and
institutions everywhere are taking the actual
implementation side of LA more seriously
38
https://its2021.iis-international.org/
deadline on January 31, 2021
https://tinyurl.com/y683abty
Questions
alexandra.i.cristea@durham.ac.uk

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2021_01_15 «Learning Analytics for Large Scale Data».

  • 1. Learning Analytics in the world of Big Data Professor AI Cristea EMadrid LALN Seminar 15/01/2021
  • 2. https://its2021.iis-international.org/ deadline on January 31, 2021 https://tinyurl.com/y683abty
  • 3. What is Learning Analytics? • Using Student’s ‘Big Data’ to Improve Teaching (Rafael Scapin, Dawson College) • ”collecting traces that learners leave behind and using those traces to improve learning.” (Eric Duval, Cath Univ of Leuven) • measurement, collection, analysis and reporting of data about learners and their contexts, for purposes of understanding and optimising learning and the environments in which it occurs (SoLAR)
  • 4. Learning Analytics Definitions: differences? • Using Student’s ‘Big Data’ to Improve Teaching (Rafael Scapin, Dawson College) • ”collecting traces that learners leave behind and using those traces to improve learning.” (Eric Duval, Cath Univ of Leuven) • measurement, collection, analysis and reporting of data about learners and their contexts, for purposes of understanding and optimising learning and the environments in which it occurs (SoLAR)
  • 5. Societies, Conferences • Society for Learning Analytics and Research (SoLAR) • International Educational Data Mining Society (IEDMS) • Learning Analytics Conference (LAK) • Educational Data Mining Conference (EDM)
  • 7. 7 Stakeholders of LA • Governments, Professional Bodies • Universities, Institutions (bodies of education) • Groups: classroom, learning groups, etc. • Teachers, Academics, Administrators • Students • Researchers micro, meso and macro levels
  • 8. Why LA?: To personalise education
  • 10. 10 Early Dropout Prediction for Programming Courses supported by Online Judges (AIED’19) Earliest predictor of dropout in MOOCs: a longitudinal study of FutureLearn courses. (ISD 2018) How is learning fluctuating? FutureLearn MOOCs fine-grained temporal Analysis and Feedback to Teachers (ISD’18) Demographic Indicators Influencing Learning Activities in MOOCs: Learning Analytics of FutureLearn Courses (ISD’18) LA Types
  • 12. Main Methodologies • Statistics • Data Mining • Machine Learning • Network Analysis • Visualisation
  • 15. 15 Evolution of EDM and LA references in Google Scholar Linan, Perez: http://rusc.uoc.edu/rusc/ca/index.php/rusc/article/view/v12n3-calvet-juan/2746.html
  • 16.
  • 17. Temporal Sentiment Analysis of Learners: Public Versus Private Channels in a Women-in-Tech Conversion Course J. Yu et al., "Temporal Sentiment Analysis of Learners: Public Versus Private Social Media Communication Channels in a Women-in-Tech Conversion Course," 2020 15th International Conference on Computer Science & Education (ICCSE), Delft, Netherlands, 2020, pp. 182-187, doi: 10.1109/ICCSE49874.2020.9201631.
  • 19. Alamri A., Sun Z., Cristea A.I., Senthilnathan G., Shi L., Stewart C. (2020) Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach. In: Kumar V., Troussas C. (eds) Intelligent Tutoring Systems. ITS 2020. Lecture Notes in Computer Science, vol 12149. Springer, Cham. https://doi.org/10.1007/978-3-030- 49663-0_42
  • 20. Result (Bird eye view) 2020 Figure 1: Learning pattern of dropout learners for Big Data course (bird eye view) Figure 2: Learning pattern of completers learners for Big Data course (bird eye view)
  • 21. Result ( Fish eye view) 2121 Figure 1: Learning pattern of completers for Shakespeare courseFigure 1: Learning pattern of completers for Shakespeare course (fish eye view) Figure 2: Learning pattern of dropout learners for Shakespeare course (fish eye view)
  • 22. Result ( statistical analysis) ➢ Learning paths of two groups of learners are statistical significantly different 2222 Table 2: P-values of linear and catch-up learning activities
  • 23. Result ➢ Learners are more likely to drop out after articles and videos 2323 Figure 3: Number of dropout/topic: a) first run b) second run
  • 24. Result ➢ 17.1% dropout transfer among quizzes in Babies in Mind ➢ Nearly one-quarter of dropout learners lose interests after reading papers in Big Data 2424 Figure 4: Babies in Mind (left) & Big Data (right): catch-up themes transition, dropout learners
  • 25. 25 ➢ Predict early dropout of four course based on time spend on each activity by two machine learning models: XGBoost and Gradient Boosting. Table 3: Early Prediction (in first ten percentages of course) of Dropout Result (machine learning)
  • 26. Pereira, F. D., Oliveira, E. H., Oliveira, D. B., Cristea, A. I., Carvalho, L. S., Fonseca, S. C., Toda, A., Isotani, S. (2020). Using learning analytics in the Amazonas: Understanding students’ behaviour in introductory programming. British Journal of Educational Technology, 51(4), 955–972. https://doi.org/10.1111/bjet.12953 Effective and Ineffective Behaviours
  • 27. Pereira, F. D., Oliveira, E. H., Oliveira, D. B., Cristea, A. I., Carvalho, L. S., Fonseca, S. C., Toda, A., Isotani, S. (2020). Using learning analytics in the Amazonas: Understanding students’ behaviour in introductory programming. British Journal of Educational Technology, 51(4), 955–972. https://doi.org/10.1111/bjet.12953 Effective and Ineffective Behaviours
  • 28. Samuel Fonseca, Filipe Dwan Pereira, Elaine H. T. Oliveira, David Fernandes, Leandro Carvalho and Alexandra Cristea "Automatic Subject-based Contextualisation of Programming Assignment Lists" In: Proceedings of The 13th International Conference on Educational Data Mining (EDM 2020), Anna N. Rafferty, Jacob Whitehill, Violetta Cavalli-Sforza, and Cristobal Romero (eds.) 2020, pp. 81 - 91 How can we extract the subject matter from programming problem statements, to automatically match programming assignment lists to non-CS courses?
  • 29. Samuel Fonseca, Filipe Dwan Pereira, Elaine H. T. Oliveira, David Fernandes, Leandro Carvalho and Alexandra Cristea "Automatic Subject-based Contextualisation of Programming Assignment Lists" In: Proceedings of The 13th International Conference on Educational Data Mining (EDM 2020), Anna N. Rafferty, Jacob Whitehill, Violetta Cavalli-Sforza, and Cristobal Romero (eds.) 2020, pp. 81 - 91
  • 30. Samuel Fonseca, Filipe Dwan Pereira, Elaine H. T. Oliveira, David Fernandes, Leandro Carvalho and Alexandra Cristea "Automatic Subject-based Contextualisation of Programming Assignment Lists" In: Proceedings of The 13th International Conference on Educational Data Mining (EDM 2020), Anna N. Rafferty, Jacob Whitehill, Violetta Cavalli-Sforza, and Cristobal Romero (eds.) 2020, pp. 81 - 91
  • 31. Samuel Fonseca, Filipe Dwan Pereira, Elaine H. T. Oliveira, David Fernandes, Leandro Carvalho and Alexandra Cristea "Automatic Subject-based Contextualisation of Programming Assignment Lists" In: Proceedings of The 13th International Conference on Educational Data Mining (EDM 2020), Anna N. Rafferty, Jacob Whitehill, Violetta Cavalli- Sforza, and Cristobal Romero (eds.) 2020, pp. 81 - 91
  • 32. Alrajhi L., Alharbi K., Cristea A.I. (2020) A Multidimensional Deep Learner Model of Urgent Instructor Intervention Need in MOOC Forum Posts. In: Kumar V., Troussas C. (eds) Intelligent Tutoring Systems. ITS 2020. Lecture Notes in Computer Science, vol 12149. Springer, Cham. https://doi.org/10.1007/978-3-030- 49663-0_27 RQ1: Is there a relationship between the various dimensions of the learners’ posts and their need for urgent instructor intervention? RQ2: Does using several dimensions as features in addition to textual data increase the model’s predictive power of the need for urgent instructor intervention, when using deep learning?
  • 33. Alrajhi L., Alharbi K., Cristea A.I. (2020) A Multidimensional Deep Learner Model of Urgent Instructor Intervention Need in MOOC Forum Posts. In: Kumar V., Troussas C. (eds) Intelligent Tutoring Systems. ITS 2020. Lecture Notes in Computer Science, vol 12149. Springer, Cham. https://doi.org/10.1007/978-3-030- 49663-0_27
  • 34. Toda, Armando M., et al. “How to Gamify Learning Systems? An Experience Report Using the Design Sprint Method and a Taxonomy for Gamification Elements in Education.” Journal of Educational Technology & Society, vol. 22, no. 3, 2019, pp. 47–60. JSTOR, www.jstor.org/stable/26896709. A. M. Toda et al., "A Taxonomy of Game Elements for Gamification in Educational Contexts: Proposal and Evaluation," 2019 IEEE 19th International Conference on Advanced Learning Technologies (ICALT), Maceió, Brazil, 2019, pp. 84-88, doi: 10.1109/ICALT.2019.00028.
  • 35. Palomino, P. T., Toda, A., Oliveira, W., et al. (2019). Exploring Content Game Elements to Support Gamification Design in Educational Systems : Narrative and Storytelling. In Proceedings of the SBIE 2019.
  • 36. AI: Top Down versus Bottom Up 36 (Student) usage data Educational Adaptive/Personalised System Educators, Psychologists, Teachers, etc.
  • 38. Concluding Remarks • LA for Big Data is here to stay • We shall see more interesting methods from various areas in the future • The world has shifted to online work, and institutions everywhere are taking the actual implementation side of LA more seriously 38
  • 39. https://its2021.iis-international.org/ deadline on January 31, 2021 https://tinyurl.com/y683abty