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Research Question1: Predict how long the user will use the tool again (difference between the two timestamps) based on his or her previous interactions – Papers
- Deep Attentive Study Session Dropout Prediction in Mobile Learning Environment
- Does Time Matter? Modeling the Effect of Time in Bayesian Knowledge Tracing
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Research Question 2: Predict which questions should be the next to be provided to the user to answer - Papers
Research Question1: Predict how long the user will use the tool again (difference between the two timestamps) based on his or her previous interactions – Papers
Context-Aware Attentive Knowledge Tracing
Research Question 3: Predicting Final Exam Grade - Papers
Dataset References for Paper Idea 3
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Learn After
Deep Attentive Study Session Dropout Predictionin Mobile Learning Environment
Reference for Deep Attentive Study Session Dropout Prediction in Mobile Learning Environment
Reference for Does Time Matter? Modeling the Effect of Time in Bayesian Knowledge Tracing
Does Time Matter? Modeling the Effect of Time in Bayesian Knowledge Tracing