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Pedro Salcedo Lagos psalcedo@udec.cl
MISTRAL: A Knowledge-Based System for Distance Education that Incorporates Neural Networks Techniques for Teaching Decisions Pedro Salcedo Lagos Universidad de Concepción, Chile
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Nobel Prize laureate in Literature (Chile), 1945
Gabriela Mistral Nobel Prize laureate in Literature (Chile), 1945
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This is the place where I come from
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Knowledge Based System
Motivation Neural Networks MISTRAL Knowledge Based System Internet Distance Education
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Contents Current Platforms (Overview) The Platform MISTRAL
NNs in MISTRAL
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Some revised Platforms
The Learning Manager WebMentor Alfa Net - UNED IVLE LUVIT Asymetrix Librarian Virtual-U eduprise.com Blackboard Convene Embanet eCollege.com IntraLearn Symposium TopClass WebCT
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Tools for Instructors Course planning On-line evaluation
Tools for Instructors Course planning Most of platforms On-line evaluation Some of platforms Specific material addressing A few platforms
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Instruction Advantages
Consistent Interface Most of platforms Synchronic communication Support internal Some platforms Help on-line A few platforms
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Tools for Students Multimedia support Discussion groups
Most of platforms Discussion groups Anouncement panel Some platforms Progress tracking A few platforms
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And Costs... Some are free (AulaWeb)
Some are expensive (about US $ 90,000 for Docent) Some have a cost per year (about US $ 5,000 for Course Info) Some include maintenance costs..., creation costs...
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Most of them considering 5 tasks
Material preparation Teaching-learning strategies generation Dialog capability Evaluation Management
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Material Preparation Current Proposed by MISTRAL Time consuming
Use activities instead of contents Examples: Read chapter X in text Y Use simulation tools Participate in a discussion group
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Strategies Generation
Current Found in only one commercial platform (Cameleon) Proposed by MISTRAL Adapts to student profile considering learning styles and previous knowledge Risk students’ detection
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Dialog Capability Current Proposed by MISTRAL
Exists in most of platform Without using AI techniques Proposed by MISTRAL Adapts media to user profiles using AI rules Automatic detection of interaction degree Personalized activities (via , portfolio)
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Evaluation Current Proposed by MISTRAL Low level of development
Assumed by the instructor Proposed by MISTRAL Adaptive evaluation based on user modelling use of Bayes nets Portfolio techniques use of virtual folders
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Management Current Proposed by MISTRAL Exists in all revised platforms
Lack of support for instructor or manager Proposed by MISTRAL Automatic statistics generation general course behavior interactivity level ... via
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MISTRAL Adapts to students’ profile by suggesting
Activities to be accomplished Tools to be used Evaluation mechanisms for correcting detected problems
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MISTRAL (cont) Multiuser modality Easy knowledge acquisition
contents and activities for each course Folder structure based in portfolio strategy Diagnostic and detection of knowledge level using rules and Bayes nets
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MISTRAL (cont) Virtual room personalized profile group interaction
warning messages when participation level of students is lower than expected
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Neural Networks in MISTRAL
Rules Objects Specified knowledge Corrective actions generation when detecting possible unsuccessful performance
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Sequence of activities in MISTRAL for NN use
yes Get student Trained net Information no Detect Failure Net training Risk no Failure Probabil. yes Determine corrective actions
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Application development
The neural net has one hidden layer and number of nodes is variable depending on number of factors to be considered The activation function is hyperbolic tangent
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If Neural Network option is used
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There are three additional entries
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Following with variables configuration
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Training the net
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Visualizing learning parameters
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Net training During training, the net learns to classify students in successful group or failure risk group depending on different psicosocial characteristics upoin requirements Data can be classified as default data (provided by MISTRAL) or user provided data
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Implementing
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Technical considerations
Windows 2000 server (translating to Linux) Database access through ODBC using SQL (translating to MySQL) Programming in VBScript, JavaScript and Java with ASP (translating to PHP) Bayes net has been programmed using JavaBayes library
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Conclusions MISTRAL Platform allows
increase productivity both in organizations oriented to distance education and in instructor work improvement in distance courses management maintain intellectual property get a better distance education teaching/learning process, really personalized and efficient
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Current work Search for more adequate threshold functions, learning rules and NN architecture to determine students’ success Learning coefficient and momentum revision, more adequate to Generalized Delta Rule Net training to adapt learning strategies to different contexts Different courses knowledge acquisition
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Thanks for your time... Pedro Salcedo Lagos
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