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Adaptivity, Personalisation and Assistive Technologies Hugh Davis
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@ 2 The Research Questions Does adaptation/personalisation improve learning? (How could we tell?) In what ways can we adapt/personalise information? How can we develop user-models to represent the real goals and current state of knowledge of users? How can we adapt to deal with accessibility issues?
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@ 3 Personalisation Personalisation is the technology of presenting information to the user that is selected and presented in a manner that is chosen based on some understanding of the user’s needs. The technology derives historically from “Intelligent Tutoring Systems” Adaptive Hypertext is the business of personalising hypertext (nodes and links) in order to improve the user’s access to appropriate information. Recommender Systems are programs which attempt to predict items (media, news, shopping, web pages) that a user may be interested in, given some information about the user's profile. Assistive Technologies are a special case of personalisation where the user’s needs are particularly concerned with the physical environment
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@ 4 A Generalised Model of an Adaptive Hypertext System (adapted from Motta et al. 2003)Motta et al. 2003
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@ 5 Taxonomy of Adaptive Hypermedia Techniques From Bailey at al. (2001) “Link Augmentation: A Context-Based Approach to Support Adaptive Hypermedia” updating Brusilovsky, P. (1996). “Methods and Techniques of Adaptive Hypermedia”.
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@ 6 What can we adapt to? User knowledge Cognitive properties (learning style, personality, etc.) User goals and plans User mood and emotions User preferences
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@ 7 User Modelling Static vs Dynamic Overlay Model The User Model is assumed to be a subset of the domain model. Success is achieved when the user model is the same as the domain model ( or at least the subset required). Adaptation will be based on tracking the user’s learning and leading the user towards Stereotypes The user is characterised (by themselves or by some test) as one of a number of stereotype users (e.g. beginner, intermediate, expert), and adaptation is based on providing materials that will be suitable for that stereotype.
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@ 8 Recommender Systems –Collaborative Filtering A collaborative filtering system suggests “Users like you bought/searched for things like this…” This suggests that the system has a model of you (and the other users) The model may be as simple as what you have bought, in which case this becomes (item-based CF) “Users who bought these things also bought ……” But there are many more complex models possible – particularly in eLearning where we may have much more information about our users than simply the documents they have searched for previously
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@ 9 Recommender Systems – Content Filtering Content based recommender systems use information about the item to find other items similar. “If you liked this book/film/music you may also like these…” (based on genre/subgenre classifications) “If you found this learning resource useful then you might also find these useful” (based on lexical similarity) Content based methods have the advantage that the we don’t need to have a large case history before it can be applied Hybrid methods are popular.
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@ 10 Assistive Technology Assistive technology devices are aids which substitute for or enhance the function of some physical or mental ability that is impaired. *We* are concerned with hardware and software products that enable people with disabilities to access, interact with, and use computers. Alternative Input Devices alternative and adaptive keyboards, alternative and ergonomic mouse/pointing systems, head-operated pointing devices, Eyeglaze pointing devices, voice input systems, cursor enlargement software, etc. Alternative Output Devices Usually to enable Blind and Vision impaired persons to use or interact with a computer. Includes Braille display/output devices, Braille embosser/printers, screen reading software, screen magnification/enlargement software, large print monitor, etc.
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@ 11 Accessible Software A quick and straightforward treatement of accessibility issues can be found at http://www.mardiros.net/univ-accessible.htmlhttp://www.mardiros.net/univ-accessible.html The IMS Guidelines for Developing Accessible Learning Applications are on notes. These provide guidelines…on notes For People who are Blind For People with Low-Vision For People with Color Blindness For People Who Are Hard-of-Hearing or Deaf For People with Physical Disabilities For People with Language or Cognitive Disabilities General Accessibility Improvements
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@ 12 Principles for Accessibility in Online Learning Allow for customization based on user preference. Provide equivalent access to auditory and visual content based on user preference. Provide compatibility with assistive technologies and include complete keyboard access. Provide context and orientation information. Follow IMS specifications and other relevant specifications, standards, and/or guidelines. Consider the use of XML.
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@ 13 SENDA and Website Conformance The Special Education Needs and Disabilities Act (SENDA) came into being in September 2002 and is an extension of the 1995 Disabilities Discrimination Act (DDA). Companies and institutions are required by law to provide equal access to information and services for all. It is against the law to treat a disabled person "less favourably" than an able bodied person. In practical terms, this means an obligation to make "reasonable adjustments". Institutions are required to anticipate the needs of their disabled students and not wait for the need for change to arise. However, you are not required to lower educational standards to achieve equal access. If information cannot be made accessible, the institution must provide information in an alternative format so as not to disadvantage any individual.
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@ 14 Follow-up study In what ways could Adaptive Hypertext techniques be used to provide an appropriate learning environment for a student with very poor sight? A student has written a recommender system which produces recommendations for alternative learning resources to the ones being viewed based on a students preferred learning style. She claims this produces good recommendations and it improves learning. What sort of experiments could she conduct to prove her claim? What is the difference between Simple Sequencing and Adaptive Hypertext Navigation?
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