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Learning Analytics Metadata Standards
- xAPI & Learning Record Store -
Dr. Hendrik Drachsler
Personalised Learning Technologies
27.10.2015, UoC, Barcelona, Spain
3
• Hendrik Drachsler
Associate Professor
• Research topics:
Personalization,
Recommender Systems,
Learning Analytics,
Mobile devices
• Application domains:
Schools, HEI, Medical
education
WhoAmI 2006 - 2009
3
Research activities
4
Greller, W., & Drachsler, H. (2012). Turning Learning into Numbers. Toward a Generic
Framework for Learning Analytics. Journal of Educational Technology & Society.
http://ifets.info/journals/15_3/4.pdf
@HDrachsler, #LASI_NL, Zeist, Netherlands
Slide 5 / 29 June 2014
1. Why LA data
standard?
2. What data
standards are
out there?
3. Indepth
exampe xAPI
4. Different
LRS designs
Lecture structure
5. Outlook
Sophistican model
Siemens, G., Dawson, S., & Lynch, G. (2014). Improving the Quality and Productivity of the Higher Education
Sector – Policy and Strategy for Systems-Level Deployment of Learning Analytics. Canberra, Australia: Office of
Learning and Teaching, Australian Government. Retrieved from
http://solaresearch.org/Policy_Strategy_Analytics.pdf
Heterogeneous TEL systems not made for
Learning Analytics
Onderwerp via >Beeld >Koptekst en voettekst
Pagina 7
•  Various heterogonous data
sources
•  No metadata standards
•  No proper description of
data fields
•  No unique user ID in the
different systems
•  Not intended for evaluation
and educational
interventions
•  No comparison of effective
methods
•  RQ1: How to generate more accurate and thus,
more relevant recommendations by using the
social data originating from social activities of
users within an online environment?
•  RQ2: Can the use of the inter-user trust
relationships that originate from the social activities
of users within an online environment further
evolve the network of users?
Example RecSys study
‪@SoudeFazeli
9
Recommender
Technologies
Manouselis, N., Drachsler, H., Verbert, K., and Duval, E. (2012). Recommender Systems
for Learning. Berlin:Springer
10
Educational Data
Drachsler, H., et al. (2010). Issues and Considerations regarding Sharable Data Sets for
Recommender Systems in Technology Enhanced Learning. 1st Workshop Recommnder
Systems in Technology Enhanced Learning (RecSysTEL@EC-TEL 2010) September, 28,
2010, Barcelona, Spain.
Verbert, K., Manouselis, N., Drachsler, H., and Duval, E. (2012). Dataset-driven Research

to Support Learning and Knowledge Analytics. Journal of Educational Technology & Society.
Important to report effects from algorithm Y to a reference dataset, to
gain common knowledge, and have reproducible results.
ACM Recommender Systems, and KDD cup work like this since years.
1. Goal
To find out which recommender algorithms best
performs and thus, is suitable for social online
platforms like ODS platform
Data-driven study
Fazeli, S., Loni, B., Drachsler, H., & Sloep, P. (2014, 16-19
September). Which recommender system can best fit social
learning platforms? Presentation given at the 9th European
Conference on Technology Enhanced Learning (EC-TEL2014),
Graz, Austria. http://dspace.ou.nl/handle/1820/5800
2. Method
•  Testing several recommender algorithms
–  Several similarity measures and nearest neighbors method
–  T-index approach
•  If explicit trust is available (Epinion)
•  If trust is not available: similarity measures + walking algorithm
(BFS)
•  Datasets
–  MovieLens – standard dataset
–  MACE, OpenScout, Travel well -- similar to the future ODS dataset
•  Using Mahout
Data-driven study
3. Setting
•  v = 0.1 (Condition 1), L = 2 (Condition 2)
•  Training set 80% and test set 20%
•  Sizes of neighborhoods n= (3,5,7,10)
•  Size of TopTrustee list m=5
Data-driven study
4. Result (F1 score)
F1 of the extended T-index and Tanimoto algorithms for
different datasets, based on the size of neighborhood
Data-driven study
4.2. Created trust network
Without T-index With T-index
Data-driven study
Sparsity!Similarity vs.
Aggregated Paradata
Drachsler, H., Bogers, T., Vuorikari, R., Verbert, K., Duval, E., Manouselis, N., Beham, G., Lindstaedt, S., Stern, H., Friedrich, M., &
Wolpers, M. (2010). Issues and considerations regarding sharable data sets for recommender systems in technology enhanced learning.
In N. Manouselis, H. Drachsler, K. Verbert, & O. Santos (Eds.), Elsevier Procedia Computer Science: Volume 1, Issue 2. Proceedings of
the 1st Workshop on Recommender Systems for Technology Enhanced Learning (RecSysTEL 2010) (pp. 2849-2858). doi: 10.1016/
j.procs.2010.08.010.
Learning
Record
Store
Dash
boards
MLN /
MOOC
Sensors
LX Sensors
Mobile Sensors
LMS
Centralised data storage
Learning Record Store (LRS)
1.  More useful analysis through the
combination of data from different sources
2.  A critical mass of data for learning science
research
3.  Sufficient scale of data to determine
relevance and quality of educational
resources
4.  Reproducibility and transparency in
learning analytics research
5.  Cross-institutional strategy comparison
6.  Research on the effect of education policy
7.  Social learning in informal settings
8.  Learner data as a teaching and learning
resource
Aims for Data Standards
http://www.laceproject.eu/deliverables/d7-2-data-sharing-roadmap/
MOLAC Innovation Cycle
Drachsler, H. & Kalz, M. (2015). The MOLAC Innovation cyle. Journal of
Computer Assisted Learning. (in press).
@HDrachsler, #LASI_NL, Zeist, Netherlands
Slide 22 / 29 June 2014
1. Why LA data
standard?
2. What data
standards are
out there?
3. Indepth
exampe xAPI
4. Different
LRS designs
Lecture structure
5. Outlook
Onderwerp via >Beeld >Koptekst en voettekst
Pagina 23
•  Content metadata (e.g., IEEE LOM).
•  Personal Data (e.g., IMS ePortfolio, IMS LIP,
or HR-XML)
•  Social metadata (ratings, tags or comments
that were intentionally contributed by the
users)
•  Paradata (automatically tracked by the
system)
•  Linked Data (interlinked datasets on the web
using the RDF standard)
Types of Data
Onderwerp via >Beeld >Koptekst en voettekst
Metadata standards for Usage
Activity Stream
Learning Registry
NSDL Paradata
Organic Edunet
Organic Edunet
Context Attention Metadata
Scheffel, M., Niemann, K., Leony, D., Pardo, A., Schmitz, H. C.,
Wolpers, M., & Kloos, C. D. (2012). Key action extraction for
learning analytics. In 21st Century Learning for 21st Century Skills
(pp. 320-333). Springer Berlin Heidelberg.
Nikolas, A., Sotiriou, S., Zervas, P., & Sampson, D. G. (2014). The
open discovery space portal: A socially-powered and open
federated infrastructure. In Digital Systems for Open Access to
Formal and Informal Learning (pp. 11-23). Springer International
Publishing.
Context Attention Metadata
Wolpers M., Najjar, J., Verbert, K., Duval, E. (2007). Tracking Actual Usage: the
Attention Metadata Approach, Journal of Educational Technology and Society,
10 (3), 106-121.
How Tin Can API works
Tin Can enabled activities send simple statements to a Learning
Record Store.
LRS
Elearning Game Simulator Blog YouTube
Most strong candidates, right now
Released since 2012 First release October 2015
•  Tracks experiences, scores, progress, teams, virtual media, real-world
experiences (not just completions)
•  Allows data storage AND retrieval (ex. 3rd party reporting and
analytics tools)
•  Enables tracking mobile, games, and virtual worlds experiences
•  Developed by open source community
Activity driven data model
John added a photo to Open U Community Environment
Jim commented on John’s photo on Community Environment
John watched How to save energy video on ARLearn at 22.05.2014 3pm
John subscribed to Sustainable Energy on Open U at 24.05.2014 1pm
John posted My first blog post in Open U Community Environment
Metadata standards for Learner Tracking
Onderwerp via >Beeld >Koptekst en voettekst
Pagina 33
Example: xAPI statement in json format
'{
"actor": {
"objectType": "Agent",
"name": ”Hendrik Drachsler",
"mbox": "mailto:hendrik.drachsler@ou.nl"
},
"verb": {
"id": "http://activitystrea.ms/schema/1.0/access",
"display": {
"en-US": "Indicates the learner accessed a page"
}
},
"object": {
"objectType": "Activity",
"id": "http://OUNL/PSY/module1.html",
"definition": {
"name": {
"en-US": "Module 1: …."
},
"description": {
"en-US": "This lesson is an introduction to the Introduction into Psychology "
},
"type": "http://adlnet.gov/expapi/activities/lesson"
}
}
}'
Although, there are standards there are
interoperability issues
@HDrachsler, #LASI_NL, Zeist, Netherlands
Slide 38 / 29 June 2014
1. Why LA data
standard?
2. What data
standards are
out there?
3. Indepth
exampe xAPI
4. Different
LRS designs
Lecture structure
5. Outlook
Onderwerp via >Beeld >Koptekst en voettekst
Pagina 39
Collecting data in a LRS
Onderwerp via >Beeld >Koptekst en voettekst
Pagina 40
ECO IT System
Repository of xAPI statements
Repository of xAPI statements
Onderwerp via >Beeld >Koptekst en voettekst
Pagina 43
@HDrachsler, #LASI_NL, Zeist, Netherlands
Slide 44 / 29 June 2014
1. Why LA data
standard?
2. What data
standards are
out there?
3. Indepth
exampe xAPI
4. Different
LRS designs
Lecture structure
5. Outlook
SURF SIG Learning Analytics
Onderwerp via >Beeld >Koptekst en voettekst
Pagina 46
The ECO Learning Record Store
The UvA Learning Record Store
Lessons Learned
•  xAPI
•  xAPI has to much freedom of choice
(Authoritative for xAPI recipes is needed )
ECO as blue print?
•  xAPI language issues
•  LRS
•  Extract-Transform-Load layer for interoperability
•  Meta-Accounts for multiple data streams
•  Data
•  Are activities all we need? (Text-based analytics)
@HDrachsler, #LASI_NL, Zeist, Netherlands
Slide 49 / 29 June 2014
1. Why LA data
standard?
2. What data
standards are
out there?
3. Indepth
exampe xAPI
4. Different
LRS designs
Lecture structure
5. Outlook
LACE – Interoperbilty reort
Ice, P., DĂ­az, S., Swan, K., Burgess, M., Sharkey, M., Sherrill, J., & Okimoto, H. (2012). The
PAR Framework Proof of Concept: Initial Findings from a Multi-Institutional Analysis of
Federated Postsecondary Data. Journal of Asynchronous Learning Networks, 16(3), 63-86.
http://anitacrawley.net/Reports/PAR%20Framework.pdf
This silde is available at:
http://www.slideshare.com/Drachsler
Email: hendrik.drachsler@ou.nl
Skype: celstec-hendrik.drachsler
Blogging at: http://www.drachsler.de
Twittering at: http://twitter.com/HDrachsler
Many thanks for your attention!

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Learning Analytics Metadata Standards, xAPI recipes & Learning Record Store -

  • 1. Learning Analytics Metadata Standards - xAPI & Learning Record Store - Dr. Hendrik Drachsler Personalised Learning Technologies 27.10.2015, UoC, Barcelona, Spain
  • 2. 3 • Hendrik Drachsler Associate Professor • Research topics: Personalization, Recommender Systems, Learning Analytics, Mobile devices • Application domains: Schools, HEI, Medical education WhoAmI 2006 - 2009
  • 4. 4 Greller, W., & Drachsler, H. (2012). Turning Learning into Numbers. Toward a Generic Framework for Learning Analytics. Journal of Educational Technology & Society. http://ifets.info/journals/15_3/4.pdf
  • 5. @HDrachsler, #LASI_NL, Zeist, Netherlands Slide 5 / 29 June 2014 1. Why LA data standard? 2. What data standards are out there? 3. Indepth exampe xAPI 4. Different LRS designs Lecture structure 5. Outlook
  • 6. Sophistican model Siemens, G., Dawson, S., & Lynch, G. (2014). Improving the Quality and Productivity of the Higher Education Sector – Policy and Strategy for Systems-Level Deployment of Learning Analytics. Canberra, Australia: Office of Learning and Teaching, Australian Government. Retrieved from http://solaresearch.org/Policy_Strategy_Analytics.pdf
  • 7. Heterogeneous TEL systems not made for Learning Analytics Onderwerp via >Beeld >Koptekst en voettekst Pagina 7 •  Various heterogonous data sources •  No metadata standards •  No proper description of data fields •  No unique user ID in the different systems •  Not intended for evaluation and educational interventions •  No comparison of effective methods
  • 8. •  RQ1: How to generate more accurate and thus, more relevant recommendations by using the social data originating from social activities of users within an online environment? •  RQ2: Can the use of the inter-user trust relationships that originate from the social activities of users within an online environment further evolve the network of users? Example RecSys study ‪@SoudeFazeli
  • 9. 9 Recommender Technologies Manouselis, N., Drachsler, H., Verbert, K., and Duval, E. (2012). Recommender Systems for Learning. Berlin:Springer
  • 10. 10 Educational Data Drachsler, H., et al. (2010). Issues and Considerations regarding Sharable Data Sets for Recommender Systems in Technology Enhanced Learning. 1st Workshop Recommnder Systems in Technology Enhanced Learning (RecSysTEL@EC-TEL 2010) September, 28, 2010, Barcelona, Spain. Verbert, K., Manouselis, N., Drachsler, H., and Duval, E. (2012). Dataset-driven Research
 to Support Learning and Knowledge Analytics. Journal of Educational Technology & Society. Important to report effects from algorithm Y to a reference dataset, to gain common knowledge, and have reproducible results. ACM Recommender Systems, and KDD cup work like this since years.
  • 11. 1. Goal To find out which recommender algorithms best performs and thus, is suitable for social online platforms like ODS platform Data-driven study Fazeli, S., Loni, B., Drachsler, H., & Sloep, P. (2014, 16-19 September). Which recommender system can best fit social learning platforms? Presentation given at the 9th European Conference on Technology Enhanced Learning (EC-TEL2014), Graz, Austria. http://dspace.ou.nl/handle/1820/5800
  • 12. 2. Method •  Testing several recommender algorithms –  Several similarity measures and nearest neighbors method –  T-index approach •  If explicit trust is available (Epinion) •  If trust is not available: similarity measures + walking algorithm (BFS) •  Datasets –  MovieLens – standard dataset –  MACE, OpenScout, Travel well -- similar to the future ODS dataset •  Using Mahout Data-driven study
  • 13. 3. Setting •  v = 0.1 (Condition 1), L = 2 (Condition 2) •  Training set 80% and test set 20% •  Sizes of neighborhoods n= (3,5,7,10) •  Size of TopTrustee list m=5 Data-driven study
  • 14. 4. Result (F1 score) F1 of the extended T-index and Tanimoto algorithms for different datasets, based on the size of neighborhood Data-driven study
  • 15. 4.2. Created trust network Without T-index With T-index Data-driven study
  • 17. Aggregated Paradata Drachsler, H., Bogers, T., Vuorikari, R., Verbert, K., Duval, E., Manouselis, N., Beham, G., Lindstaedt, S., Stern, H., Friedrich, M., & Wolpers, M. (2010). Issues and considerations regarding sharable data sets for recommender systems in technology enhanced learning. In N. Manouselis, H. Drachsler, K. Verbert, & O. Santos (Eds.), Elsevier Procedia Computer Science: Volume 1, Issue 2. Proceedings of the 1st Workshop on Recommender Systems for Technology Enhanced Learning (RecSysTEL 2010) (pp. 2849-2858). doi: 10.1016/ j.procs.2010.08.010.
  • 19. Centralised data storage Learning Record Store (LRS)
  • 20. 1.  More useful analysis through the combination of data from different sources 2.  A critical mass of data for learning science research 3.  Sufficient scale of data to determine relevance and quality of educational resources 4.  Reproducibility and transparency in learning analytics research 5.  Cross-institutional strategy comparison 6.  Research on the effect of education policy 7.  Social learning in informal settings 8.  Learner data as a teaching and learning resource Aims for Data Standards http://www.laceproject.eu/deliverables/d7-2-data-sharing-roadmap/
  • 21. MOLAC Innovation Cycle Drachsler, H. & Kalz, M. (2015). The MOLAC Innovation cyle. Journal of Computer Assisted Learning. (in press).
  • 22. @HDrachsler, #LASI_NL, Zeist, Netherlands Slide 22 / 29 June 2014 1. Why LA data standard? 2. What data standards are out there? 3. Indepth exampe xAPI 4. Different LRS designs Lecture structure 5. Outlook
  • 23. Onderwerp via >Beeld >Koptekst en voettekst Pagina 23 •  Content metadata (e.g., IEEE LOM). •  Personal Data (e.g., IMS ePortfolio, IMS LIP, or HR-XML) •  Social metadata (ratings, tags or comments that were intentionally contributed by the users) •  Paradata (automatically tracked by the system) •  Linked Data (interlinked datasets on the web using the RDF standard) Types of Data
  • 24. Onderwerp via >Beeld >Koptekst en voettekst Metadata standards for Usage Activity Stream Learning Registry NSDL Paradata
  • 27. Context Attention Metadata Scheffel, M., Niemann, K., Leony, D., Pardo, A., Schmitz, H. C., Wolpers, M., & Kloos, C. D. (2012). Key action extraction for learning analytics. In 21st Century Learning for 21st Century Skills (pp. 320-333). Springer Berlin Heidelberg. Nikolas, A., Sotiriou, S., Zervas, P., & Sampson, D. G. (2014). The open discovery space portal: A socially-powered and open federated infrastructure. In Digital Systems for Open Access to Formal and Informal Learning (pp. 11-23). Springer International Publishing.
  • 28. Context Attention Metadata Wolpers M., Najjar, J., Verbert, K., Duval, E. (2007). Tracking Actual Usage: the Attention Metadata Approach, Journal of Educational Technology and Society, 10 (3), 106-121.
  • 29. How Tin Can API works Tin Can enabled activities send simple statements to a Learning Record Store. LRS Elearning Game Simulator Blog YouTube
  • 30. Most strong candidates, right now Released since 2012 First release October 2015 •  Tracks experiences, scores, progress, teams, virtual media, real-world experiences (not just completions) •  Allows data storage AND retrieval (ex. 3rd party reporting and analytics tools) •  Enables tracking mobile, games, and virtual worlds experiences •  Developed by open source community
  • 31. Activity driven data model John added a photo to Open U Community Environment Jim commented on John’s photo on Community Environment John watched How to save energy video on ARLearn at 22.05.2014 3pm John subscribed to Sustainable Energy on Open U at 24.05.2014 1pm John posted My first blog post in Open U Community Environment
  • 32. Metadata standards for Learner Tracking
  • 33. Onderwerp via >Beeld >Koptekst en voettekst Pagina 33
  • 34. Example: xAPI statement in json format '{ "actor": { "objectType": "Agent", "name": ”Hendrik Drachsler", "mbox": "mailto:hendrik.drachsler@ou.nl" }, "verb": { "id": "http://activitystrea.ms/schema/1.0/access", "display": { "en-US": "Indicates the learner accessed a page" } }, "object": { "objectType": "Activity", "id": "http://OUNL/PSY/module1.html", "definition": { "name": { "en-US": "Module 1: …." }, "description": { "en-US": "This lesson is an introduction to the Introduction into Psychology " }, "type": "http://adlnet.gov/expapi/activities/lesson" } } }'
  • 35.
  • 36. Although, there are standards there are interoperability issues
  • 37.
  • 38. @HDrachsler, #LASI_NL, Zeist, Netherlands Slide 38 / 29 June 2014 1. Why LA data standard? 2. What data standards are out there? 3. Indepth exampe xAPI 4. Different LRS designs Lecture structure 5. Outlook
  • 39. Onderwerp via >Beeld >Koptekst en voettekst Pagina 39
  • 40. Collecting data in a LRS Onderwerp via >Beeld >Koptekst en voettekst Pagina 40
  • 42. Repository of xAPI statements
  • 43. Repository of xAPI statements Onderwerp via >Beeld >Koptekst en voettekst Pagina 43
  • 44. @HDrachsler, #LASI_NL, Zeist, Netherlands Slide 44 / 29 June 2014 1. Why LA data standard? 2. What data standards are out there? 3. Indepth exampe xAPI 4. Different LRS designs Lecture structure 5. Outlook
  • 45. SURF SIG Learning Analytics
  • 46. Onderwerp via >Beeld >Koptekst en voettekst Pagina 46 The ECO Learning Record Store
  • 47. The UvA Learning Record Store
  • 48. Lessons Learned •  xAPI •  xAPI has to much freedom of choice (Authoritative for xAPI recipes is needed ) ECO as blue print? •  xAPI language issues •  LRS •  Extract-Transform-Load layer for interoperability •  Meta-Accounts for multiple data streams •  Data •  Are activities all we need? (Text-based analytics)
  • 49. @HDrachsler, #LASI_NL, Zeist, Netherlands Slide 49 / 29 June 2014 1. Why LA data standard? 2. What data standards are out there? 3. Indepth exampe xAPI 4. Different LRS designs Lecture structure 5. Outlook
  • 51.
  • 52.
  • 53. Ice, P., DĂ­az, S., Swan, K., Burgess, M., Sharkey, M., Sherrill, J., & Okimoto, H. (2012). The PAR Framework Proof of Concept: Initial Findings from a Multi-Institutional Analysis of Federated Postsecondary Data. Journal of Asynchronous Learning Networks, 16(3), 63-86. http://anitacrawley.net/Reports/PAR%20Framework.pdf
  • 54. This silde is available at: http://www.slideshare.com/Drachsler Email: hendrik.drachsler@ou.nl Skype: celstec-hendrik.drachsler Blogging at: http://www.drachsler.de Twittering at: http://twitter.com/HDrachsler Many thanks for your attention!