MODELS AND METHODS FOR IMPLEMENTING PEDAGOGICAL INTERVENTIONS IN MODEL-TRACING COGNITIVE TUTORS

Juan Pablo Martinez Bastida, Андрей Григорьевич Чухрай, Елена Владимировна Гавриленко

Abstract


This paper presents some models and methods for generating pedagogical interventions in model-tracing cognitive tutors. They use Bayesian networks for assessment and making decisions, this feature allows managing uncertainty reasoning based on a formal foundation. This technique combines the rigorous probabilistic formalisms with a graphical representation and efficient inference mechanisms. It is explained how Bayesian networks are employed as an inference engine to assess the degree of learning of the relevant knowledge components in the learning domain and determine the proper pedagogical interventions for performing a productive learning process

Keywords


information technologies; Bayesian network; pedagogical intervention; model-tracing; cognitive tutors; Bayesian assessment

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References


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DOI: https://doi.org/10.32620/reks.2017.1.04

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