Knowledge Graph Enhanced Intelligent Tutoring System Based on Exercise Representativeness and Informativeness
Linqing Li, Zhifeng Wang

TL;DR
This paper introduces a novel knowledge graph-based framework for intelligent tutoring systems that models exercise representativeness and informativeness, improving personalized exercise recommendation and student performance prediction.
Contribution
It proposes a comprehensive framework with four components and a neural cognitive diagnosis model to better capture exercise features and enhance recommendation accuracy.
Findings
Framework improves exercise recommendation accuracy
Enhances student performance prediction
Effective on multiple educational datasets
Abstract
Presently, knowledge graph-based recommendation algorithms have garnered considerable attention among researchers. However, these algorithms solely consider knowledge graphs with single relationships and do not effectively model exercise-rich features, such as exercise representativeness and informativeness. Consequently, this paper proposes a framework, namely the Knowledge-Graph-Exercise Representativeness and Informativeness Framework, to address these two issues. The framework consists of four intricate components and a novel cognitive diagnosis model called the Neural Attentive cognitive diagnosis model. These components encompass the informativeness component, exercise representation component, knowledge importance component, and exercise representativeness component. The informativeness component evaluates the informational value of each question and identifies the candidate…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Online Learning and Analytics
