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Adaptive Learning using Graph Neural Network and Knowledge Graph
MPhil Thesis Defence Title: "Adaptive Learning using Graph Neural Network and Knowledge Graph" By Mr. Shing Chun YIP Abstract Adaptive learning is designed to serve as a personalization tool for providing recommendations such as study pathways, next-question suggestions for students with the study of knowledge tracing. Deep Knowledge Tracing (DKT) is the first deep learning model that traces the knowledge of students, with long short-term memory (LSTM). In this thesis, the DKT model is extended by exploiting the Graph Neural Network (GNN) and the knowledge graph to tackle the limitation of Recurrent Neural Network in handling long-term dependency. We demonstrate how the graph model can be used to improve the DKT model with the help of the knowledge graph structure. Our model can be applied to modern e-learning systems for adaptive learning which predicts the future performance of students and recommends encouraging questions. Date: Wednesday, 30 December 2020 Time: 2:30pm - 4:30pm Zoom meeting: https://hkust.zoom.us/j/94658203483?pwd=UGlKS0NoK0lDZW04eUlCeVliU3JPdz09 Committee Members: Prof. Raymond Wong (Supervisor) Prof. Dit-Yan Yeung (Chairperson) Prof. Dik-Lun Lee **** ALL are Welcome ****