Publication | Closed Access
<i>Bayesian student modeling and the problem of parameter specification</i>
19
Citations
7
References
2001
Year
Bayesian StatisticBayesian Decision TheoryEducationCausal InferenceBayesian InferenceStatistical Relational LearningBayesian Student ModelingData ScienceProbabilistic ReasoningManagementBayesian ModelingBayesian MethodsPublic HealthStatisticsConditional ProbabilitiesBayesian NetworkLearning AnalyticsCausal IndependenceBayesian NetworksBayesian StatisticsStatistical InferenceData Modeling
In this paper, the application of Bayesian networks to student modeling is discussed. A review of related work is made, and then the structural model is defined. Two of the most commonly cited reasons for not using Bayesian networks in student modeling are the computational complexity of the algorithms and the difficulty of the knowledge acquisition process . We propose an approach to simplify knowledge acquisition. Our approach applies causal independence to factor the conditional probabilities and decrease the parameters required for each question to a number linear in the number of concepts. This also provides the new parameters with an intuitive meaning that makes their specification easier. Finally, we present an example to illustrate the use of our approach.
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