Challenge and Potential of
Fine Grain, Cross-Institutional Learning Data
challenges of diversity
Alan Dix
Talis & Universi...
Talis Aspire Reading List
store and structure
course resources
embeded in VLE
connects with course
management and
learning...
Talis Aspire Reading Lists … scale …
Talis lighthouse pilot
universal player
micro-analytics …
individual course
resource
student
scale
up and down
MOOC scale
lots of students
following the same course
large volumes of homogeneous data
heterogeneity
courses and
institutions
individuality
learning styles
patterns of viewing
cross-institutional
issues
owners...
abstracting heterogeneity ?
individual traces  classes of behaviour
 big data analysis  pedagogic feedback
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Challenges of Diversity

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Part 2 of presentation for "Challenge and Potential of Fine Grain, Cross-Institutional Learning Data" at SCM Learning @ Scale conference. This part looks the diverse data that Talis handles, and looks at me of the challenges of diversity arising from heterogeneity of courses, individual study pattern of students and cross institutional issues of ownership and privacy.

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Challenges of Diversity

  1. 1. Challenge and Potential of Fine Grain, Cross-Institutional Learning Data challenges of diversity Alan Dix Talis & University of Birmingham http://alandix.com/academic/papers/LS2016/
  2. 2. Talis Aspire Reading List store and structure course resources embeded in VLE connects with course management and learning analytics
  3. 3. Talis Aspire Reading Lists … scale …
  4. 4. Talis lighthouse pilot universal player micro-analytics … individual course resource student
  5. 5. scale up and down
  6. 6. MOOC scale lots of students following the same course large volumes of homogeneous data
  7. 7. heterogeneity courses and institutions individuality learning styles patterns of viewing cross-institutional issues ownership and privacy
  8. 8. abstracting heterogeneity ? individual traces  classes of behaviour  big data analysis  pedagogic feedback

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