Automatic Concept Extraction for Domain and Student Modeling in Adaptive Textbooks

The increasing popularity of digital textbooks as a new learning media has resulted in a growing interest in developing a new generation of adaptive textbooks that can help readers to learn better through adapting to the readers’ learning goals and the current state of knowledge. These adaptive text...

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Veröffentlicht in:International journal of artificial intelligence in education 2021-12, Vol.31 (4), p.820-846
Hauptverfasser: Chau, Hung, Labutov, Igor, Thaker, Khushboo, He, Daqing, Brusilovsky, Peter
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container_title International journal of artificial intelligence in education
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creator Chau, Hung
Labutov, Igor
Thaker, Khushboo
He, Daqing
Brusilovsky, Peter
description The increasing popularity of digital textbooks as a new learning media has resulted in a growing interest in developing a new generation of adaptive textbooks that can help readers to learn better through adapting to the readers’ learning goals and the current state of knowledge. These adaptive textbooks are most frequently powered by internal knowledge models, which associate a list of unique domain knowledge concepts with each section of the textbook. With this kind of concept-level knowledge representation, a number of intelligent operations could be performed, which include student modeling, adaptive navigation support, and content recommendation. However, manual indexing of each textbook section with concepts is challenging, time-consuming, and prone to errors. Modern research in the area of natural language processing offers an attractive alternative, called automatic keyphrase extraction . While a range of keyphrase and concept extraction methods have been developed over the last twenty years, few of the known approaches were applied and evaluated in a textbook context. In this paper, we present FACE, a supervised feature-based machine learning method for automatic concept extractions from digital textbooks. This method has been created for building domain and student models that form the core of intelligent textbooks. We evaluated FACE on a newly constructed full-scale dataset by assessing how well it approximates concept annotations produced by human experts and how well it supports the needs of student modeling. The results show that FACE outperforms several state-of-the-art keyphrase extraction methods.
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subjects A festschrift in honour of Jim Greer
Adaptation
Annotations
Artificial Intelligence
Automation
Comparative Analysis
Computer Science
Computer Uses in Education
Computers and Education
Customization
Documentation
Educational Technology
Hypermedia
Information Retrieval
Keywords
Knowledge
Knowledge Level
Knowledge representation
Machine learning
Modelling
Natural Language Processing
Periodicals
Personalized learning
Prerequisites
Researchers
Subject specialists
Teaching Methods
Textbooks
Tutoring
User Interfaces and Human Computer Interaction
title Automatic Concept Extraction for Domain and Student Modeling in Adaptive Textbooks
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