A machine learning framework for an expert tutor construction
This paper discusses a machine learning framework that uses extraction, classification, and generalization techniques to classify students according to their cognitive and behavioral learning patterns and to categorize tutoring strategies of expert human tutors. A great deal of the discussion focuse...
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oai:animorepository.dlsu.edu.ph:faculty_research-13202022-01-05T01:19:10Z A machine learning framework for an expert tutor construction Legaspi, R. S. Sison, Raymund C. This paper discusses a machine learning framework that uses extraction, classification, and generalization techniques to classify students according to their cognitive and behavioral learning patterns and to categorize tutoring strategies of expert human tutors. A great deal of the discussion focuses on the use of reinforcement learning techniques, specifically the ?-greedy and temporal difference TD(0) methods in deriving tutoring policies over a class of students. Future works will deal on incremental learning and modification of learned policies while the tutor performs on-line in real-time, and extracting and learning the way expert tutors execute their tutoring activities. © 2002 IEEE. 2002-01-01T08:00:00Z text text/html https://animorepository.dlsu.edu.ph/faculty_research/321 Faculty Research Work Animo Repository Intelligent tutoring systems Expert systems (Computer science) Computer Sciences |
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Intelligent tutoring systems Expert systems (Computer science) Computer Sciences Legaspi, R. S. Sison, Raymund C. A machine learning framework for an expert tutor construction |
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This paper discusses a machine learning framework that uses extraction, classification, and generalization techniques to classify students according to their cognitive and behavioral learning patterns and to categorize tutoring strategies of expert human tutors. A great deal of the discussion focuses on the use of reinforcement learning techniques, specifically the ?-greedy and temporal difference TD(0) methods in deriving tutoring policies over a class of students. Future works will deal on incremental learning and modification of learned policies while the tutor performs on-line in real-time, and extracting and learning the way expert tutors execute their tutoring activities. © 2002 IEEE. |
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Legaspi, R. S. Sison, Raymund C. |
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Legaspi, R. S. Sison, Raymund C. |
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Legaspi, R. S. |
title |
A machine learning framework for an expert tutor construction |
title_short |
A machine learning framework for an expert tutor construction |
title_full |
A machine learning framework for an expert tutor construction |
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A machine learning framework for an expert tutor construction |
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A machine learning framework for an expert tutor construction |
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machine learning framework for an expert tutor construction |
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Animo Repository |
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2002 |
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https://animorepository.dlsu.edu.ph/faculty_research/321 |
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