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New Topologies for Learning

New Topologies for Learning. Tim O’Shea & Eileen Scanlon. Peter Drucker in Forbes ‘97. IT Progress will mean the end of the residential university by 2030 AD; replaced by personalized technologies for learning. Talk Structure. Ideal Next Generation Providers

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New Topologies for Learning

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  1. New Topologies for Learning Tim O’Shea & Eileen Scanlon

  2. Peter Drucker in Forbes ‘97 IT Progress will mean the end of the residential university by 2030 AD; replaced by personalized technologies for learning.

  3. Talk Structure • Ideal Next Generation Providers • Actual Next Generation Providers • History of eLearning • Recent Technological Innovations • Nice Exemplars • Themes & Issues • Reasons for Optimism

  4. The Ideal • Comprehensive Online Curriculum • Personalised Support • Peer Learning Cohorts • Integrated Admin & Learning • Mobile & Blended Modes • High Integrity • Respected Degrees

  5. Major Universities • Research Led Learning • Digitising Intellectual Assets • Extending Curatorial Role • Weak on Integrated Admin • Weak for Remote Students • Struggling with Assessment • History of Awarding Degrees

  6. Other Providers • More Responsive & Flexible • Closer to New Tech • Cross Borders more Easily • Integrated Solutions • No Researchers or Curators • Very Limited Assets • Value of new ‘Awards’?

  7. Taxonomy of models • Using psychological models of learning to classify different approaches to e-Learning, technology enhanced learning, computer assisted learning …

  8. Models • Reinforcement • Association • Feedback • Programming • Developmental • Symbolic • Collaborative • Environmental

  9. One can predict that in a few more years millions of schoolchildren will have access to what Philip of Macedon’s son Alexander had enjoyed as a royal prerogative - a tutor as well-informed and responsive as Aristotle. • Pat Suppes 1966

  10. Enhancements to Learning Special properties computers can contribute to enhance quality of learning

  11. Visualisation Diagnosis Remediation Reflection Memory Prostheses Tackling the Hypothetical Time Travel Autonomy Pacing Motivation Redundancy Group Working Scaffolding Access Knowledge Integration Enhancements

  12. People are driven by a will to mastery (challenge), to seek optimally informative environments (curiosity) which they assimilate, in part, using schemes from other contexts (fantasy) • Malone/Piaget

  13. Technology Drives • Moore’s Law • World Wide Web • RFID & Portable OOPS • VoIP • VLEs • Constant Connectivity • 3D Virtual Realities

  14. Recent Events • 1Bn Internet Users • 25% read Blogs • 10 Bn Google uses/day • Wikipedia v Brittanica • YouTube (videos) • MySpace (egos) • SunSPOT & Specks

  15. Edinburgh Exemplars • Range of Contexts • Digimap/EDINA/JISC • eScience (with Glasgow) • High Performance (CCLRC) • Digital Curation Centre (G&B) • Divinity – using key assets • Midgealert – models & maps

  16. Scott McNeally ‘04 ‘Book are so last Millenium’

  17. The Library has a new ‘federated search service’ which provides a Google-like search of Library indexes and full-text databases – both commercial services taken on subscription, and databases we have built ourselves

  18. We can select a subject cluster, as here, a ‘Quicksearch’, or to search against all (currently 300) databases, using a keyword or keywords

  19. Results take only a few seconds, even for searches against a large numberof databases. Here we have only searched locally-created databases

  20. Search results can include images we have digitised and catalogued

  21. And coming soon – an ‘enriched’ presentation of the LibraryCatalogue, amazon-style

  22. Digitised Library treasures are made available in undergraduate and postgraduate courses

  23. S Search for Resources The federated search service can be ‘pasted in’ to useful otherenvironments, such as a course website, in the form of a ‘Googlesearch box’, with the subset of databases chosen by academic staff

  24. Objectives/Aims • LeActiveMath aims at advancing e-learning technology by developing innovative technology and by integrating advanced tools and components in one open, service-based system. The progress is evaluated in realistic learning settings1. • The benefits for students using LeActiveMath include: • Learning material tailored to the students' needs and interests. The personalization is pedagogically/cognitively justified. • Students can work interactively with tools, take the initiative and self-regulate learning, e.g. in interactive exercises, in tutorial dialogues, in choosing learning settings and include learning objects, and searching for learning objects and interactive exercises.  • Students can inspect their learner model and negotiate modifications. These meta-cognitive activities will support acceptance and self-monitoring. Since the learner model includes beliefs not only about the student's competencies but also about motivational variables, the system can adapt the feedback, dialogues and the user interface to the learner's motivation. • Students can communicate in their own words in the dialogue.

  25. Table of Contents Definition A Book A Chapter Example A Page Note

  26. Student types a statement Tutorial Dialogue Adds math formulae Sends statement Statement is added to dialogue and the system responds. Response explains concepts and sets further exercises.

  27. Mastery colours represent the user’s knowledge for the content of each page. If the user hovers the mouse over these mastery colours a percentage knowledge value is displayed. LeAM estimates user knowledge based on their performance on exercises. These beliefs are based on mathematical concepts not just content. As these concepts are shared by different pages the mastery colours propagate to pages that the user hasn’t even viewed yet. This allows the user to see what the already know and what they still have to learn.

  28. Navigation Support Where am I in this information space? Is it really a 2D space, tree, network lattice? Who is also active in the space? How can I plan next week’s route? How can I travel between spaces? How can I travel in parallel?

  29. Virtuality • Value – reduces memory load, structures experience, easier to use and retrieve use • Key metaphor – ‘Direct manipulation’ • Virtual Microscope • Virtual Summer School • Virtual University • Virtual Reality • Virtual Library

  30. Themes • Technology Push • Globalisation Pull • Blended Learning • Intellectual Asset Management • Personalisation & Podcasting • Assessment & Authentication • New Learning Topologies

  31. Issues • Security & Identity Management • Object Economy (di Sessa ILE 2004) • No Significant Difference (Kim on 3D) • Digital Divide/Disconnect • Interoperability • ‘Open’Standards • Robust Assessment Models

  32. Next generation spaces: virtual worlds Second Life

  33. Next generation spaces:integrating web 2.0 with the VLE wikis

  34. Next generation spaces:integrating web 2.0 with the VLE socialbook-marking

  35. Next generation spaces:integrating web 2.0 with the VLE blogging

  36. Next generation spaces:integrating web 2.0 with the VLE social software

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