Etd

Leveraging Influential Factors into Bayesian Knowledge Tracing

Público

Conteúdo disponível para baixar

open in viewer

Predicting student performance is an important part of the student modeling task in Intelligent Tutoring System (ITS). The state-of-art model for predicting student performance - Bayesian Knowledge Tracing (KT) has many critical limitations. One specific limitation is that KT has no underlying mechanism for memory decay represented in the model, which means that no forgetting is happening in the learning process. In addition we notice that numerous modification to the KT model have been proposed and evaluated, however many of these are often based on a combination of intuition and experience in the domain, leading to models without performance improvement. Moreover, KT is computationally expensive, model fitting procedures can take hours or days to run on large datasets. The goal of this research work is to improve the accuracy of student performance prediction by incorporating the memory decay factor which the standard Bayesian Knowledge Tracing had ignored. We also propose a completely data driven and inexpensive approach to model improvement. This alternative allows for researchers to evaluate which aspects of a model are most likely to result in model performance improvements based purely on the dataset features that are computed from ITS system logs.

Creator
Colaboradores
Degree
Unit
Publisher
Language
  • English
Identifier
  • etd-011013-004307
Palavra-chave
Advisor
Defense date
Year
  • 2013
Date created
  • 2013-01-10
Resource type
Rights statement
Última modificação
  • 2021-02-01

Relações

Em Collection:

Itens

Itens

Permanent link to this page: https://digital.wpi.edu/show/zw12z5442