Learning task models in ill-defined domain using an hybrid knowledge discovery framework
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摘要
Domain experts should provide Intelligent Tutoring Systems (ITS) with relevant domain knowledge that enable it to guide the learner during problem-solving learning activities. However, for ill-defined domains this knowledge is hard to define explicitly. Our hypothesis is that knowledge discovery (KD) techniques can be used to extract problem-solving task models from the recorded usage of expert, intermediate and novice learners. This paper proposes a procedural-knowledge acquisition framework based on a combination of sequential pattern mining and association rules discovery techniques. The framework has been implemented and is used to discover new meta-knowledge and rules in a given domain which then extend domain knowledge and serve as problem space, allowing the Intelligent Tutoring System to guide learners in problem-solving situations. Preliminary experiments have been conducted using the framework as an alternative to a path-planning problem solver in CanadarmTutor.
论文关键词:Intelligent Tutoring Systems,Data mining,Knowledge acquisition,Knowledge discovery,Robotics
论文评审过程:Received 4 July 2008, Revised 4 August 2010, Accepted 4 August 2010, Available online 8 August 2010.
论文官网地址:https://doi.org/10.1016/j.knosys.2010.08.002