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Deep Reinforcement Learning for Adaptive Learning Systems
Xiao Li
, Hanchen Xu
,
Jinming Zhang
,
Hua Hua Chang
Educational Psychology
Statistics
Center for East Asian and Pacific Studies
Research output
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peer-review
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Keyphrases
Adaptive Learning System
100%
Deep Reinforcement Learning (deep RL)
100%
Learning Policy
100%
Latent Trait
80%
Adaptive Learning
60%
Optimal Learning
60%
Transition Model Estimator
60%
Learning Problems
40%
Learning Process
40%
Transition Model
40%
Neural Network
20%
Material-based
20%
Learning Materials
20%
Numerical Simulation Studies
20%
Markov Decision Process
20%
Deep Q-learning
20%
Deep Q-learning Algorithm
20%
Individualized Learning Plan
20%
Model-free Deep Reinforcement Learning
20%
Computer Science
Transition Model
100%
Adaptive Learning
100%
Deep Reinforcement Learning
100%
Learning System
100%
Learning Process
40%
Learning Problem
40%
Simulation Study
20%
Neural Network
20%
Learning Materials
20%
Numerical Simulation
20%
Learning Algorithm
20%
Markov Decision Process
20%
Mathematics
Simulation Study
100%
Neural Network
100%
Markov Decision Process
100%
Chemical Engineering
Learning System
100%
Reinforcement Learning
100%
Neural Network
50%
Social Sciences
Learning Process
100%
Decision Process
50%
Neural Network
50%
Decision Making
50%
Psychology
Latent Trait
100%
Neural Network
25%
Learning Algorithm
25%