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Published byNathaniel Scott Modified over 9 years ago
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Elisa Benetti, Lepida SpA, Italy Cristina De Castro, IEIIT-CNR, National Research Council of Italy
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Introduction Aim Traditional training VS proposed method The proposed adaptive training architecture Logical flow example
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INTERACTIVE TEACHING ADAPTIVE TESTING ADAPTIVE LEARNING
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CATEGORY SELECTION
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Authentication and Group Selection New Task Selection Learning Phase Adaptive Testing Petri Net On-line Tutoring On-Line Tasks Tasks GroupN Scores and levels achieved Centralized DB OFF-LINE SERVICE ON-LINE SERVICE SUPPLIER
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LDAP(Tasks)LDAP(Tasks)DBMS (Training Material) DBMS SERVICE (User) SERVICE (Provider) CENTRALIZEDDBMS (Error tracking) CENTRALIZEDDBMS
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(optional)
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Click Upload Choose File Click Start Upload Modify Description Click Save Delete File LEVEL 0 TASKS LEVEL 1 TASKS Click File List
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INPUT P1: level 1 task P3: learning phase P13: return to level 1 task P2:click help (user action) P7: click file list (user action) P8:modify descriptin (user action) P9: click save (user action) P10: click delete (user action)
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OUTPUT P11: final level reached P12: current POSITIVE score (coming from task) P14: current NEGATIVE score (coming from help)
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Level 1 task: modify a file description
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User can’t find Files list and asks for help
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Level 1 task: modify a file description Learning materials are presented to the user
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Level 1 task: modify a file description User is redirected to a level 1 task with a negative score of 3
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Level 1 task: delete a file
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User finds the list of file
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Level 1 task: delete a file User correctly deletes the file
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Level 1 task: delete a file User achieves a positive score of 10 and COULD go to level 2
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CONDITION 1: the total score achieved (P12-P14) is sufficient CONDITION 2: user could go to the next level (P11)
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Adaptive training is a new approach to web- based services training Users are divided into main categories An off-line training phase is mandatory to handle with the real service in the next phase The training system autonomously upgrades itself, using frequent errors to propose new tasks
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Thank you for your kind attention Thank you for your kind attention elisa.benetti@lepida.it cristina.decastro@ieiit.cnr.it
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