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A C++ standard template library intelligent tutoring system with Bayesian and fuzzy logic student model / Christine Lee Siew Ken

机译:具有贝叶斯和模糊逻辑学生模型的C ++标准模板库智能辅导系统/ Christine Lee siew Ken

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摘要

Earlier work on Intelligent Tutoring Systems (ITSs) for programming focused more on teaching programming syntax than its application. The main tutoring approach is to present a problem specification for the student to solve, followed by intelligent analysis of the solution with various feedback. It is also observed that existing ITSs suffer from static domain knowledge and are restricted to the tutoring session. Therefore, this research proposes the development of a web-based ITS for both curriculum planners and implementer-tutors to teach students the application of the C++ Standard Template Library (STL) to problem solving.udFrom experience, it is discovered that students find the C++ STL difficult due to their weaknesses in understanding various object-oriented concepts. This ITS overcomes the learning and teaching challenges by modelling the program specification based on prerequisite concepts. Bayesian Theorem is applied to model the student’s knowledge and direct the tutoring intelligently. Bayesian probability reasoning is a well-known Artificial Intelligence technique for uncertainties management. The development of the C++ STL ITS applies practices from the eXtreme Programming methodology and J2EE technologies. The 3-tier architecture ITS constitutes three main components – Student Modelling Module, Tutoring Module and Users Administration Module providing the authoring of the domain knowledge dynamically. Hence, tutors can then fully participate in the design of the curriculum and tutoring sessions as well as in the implementation of the tutorials for their students for effective teaching and learning.udBoth summative and formative evaluations were conducted on the C++ STL ITS. The evaluation results revealed that the Bayesian Theorem has the capability of modelling the student’s prerequisite and directing the student during the tutorial session. The Fuzzy Stereotyping of Students Expert System works well in categorizing the students according to four stereotypes – novice, beginner, intermediate and advanced.udShort term future enhancements include extending the tutorial questions, domain knowledge, accommodating more feedback on the programming syntax, and incorporating the fuzzy expert system into the C++ STL ITS. Three areas of research proposed for long term are application of alternative knowledge acquisition techniques, integration of learning styles into the student model, and representation of domain knowledge using ontologies.
机译:编程方面的智能辅导系统(ITS)的早期工作更多地是在讲授编程语法而不是其应用程序。主要的辅导方法是为学生提供一个要解决的问题规范,然后通过各种反馈对解决方案进行智能分析。还可以观察到,现有的ITS具有静态领域知识,并且仅限于辅导会话。因此,这项研究建议为课程计划者和实施者教师开发一种基于Web的ITS,以教学生C ++标准模板库(STL)在解决问题中的应用。 ud从经验中发现,学生发现了由于C ++ STL在理解各种面向对象的概念方面的弱点,因此很难。该ITS通过基于先决条件概念对程序规范进行建模,从而克服了学与教的挑战。贝叶斯定理用于对学生的知识进行建模并智能地指导补习。贝叶斯概率推理是一种用于不确定性管理的著名人工智能技术。 C ++ STL ITS的开发采用了eXtreme编程方法和J2EE技术​​的实践。 3层架构ITS包含三个主要组件-学生建模模块,辅导模块和用户管理模块,可动态地提供领域知识的创作。因此,导师可以充分参与课程和补习课程的设计,以及为学生而进行的教程的实施,以实现有效的教与学。 ud对C ++ STL ITS进行了总结性和形成性评估。评估结果表明,贝叶斯定理具有对学生的先决条件进行建模的能力,并可以在指导课程中指导学生。学生的模糊刻板印象专家系统可以很好地根据新手,初学者,中级和高级四个定型对学生进行分类。 ud短期内的未来增强功能包括扩展教程问题,领域知识,提供更多有关编程语法的反馈以及合并将模糊专家系统集成到C ++ STL ITS中。长期提出的三个研究领域是替代性知识获取技术的应用,将学习方式整合到学生模型中以及使用本体表示领域知识。

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    Christine Lee Siew Ken;

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  • 年度 2006
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