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Integrated Introspective Case-Based Reasoning for Intelligent Tutoring Systems

机译:智能辅导系统的综合内省案例推理

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Many intelligent tutoring systems (ITSs) have been developed, deployed, assessed, and proven to facilitate learning. However, most of these systems do not generally adapt to new circumstances, do not self-evaluate and self-configure their own strategies, and do not monitor the usage history of the learning content being delivered or presented to the students. These shortcomings force ITS developers to often spend much development time in manual revision and fine-tuning of the learning and instructional contents of an ITS. In this paper, we describe an intelligent agent that delivers learning material adaptively to different students, factoring in the usage history of the learning materials and student profiles as observed by the agent. Student-tutor interaction includes the activities of going through learning material, such as a topical tutorial, a set of examples, and a set of problems. Our assumption is that our agent will be able to capture and utilize these student activities as the primer to select the appropriate examples or problems to administer to the student. Using an integrated introspective case-based reasoning approach, our agent further learns from its experience and refines its reasoning process-including the instructional strategies-to adapt to student needs. Moreover, our agent monitors the usage history of the learning materials to improve its performance. We have built an end-to-end ITS using an agent powered by this integrated introspective case-based reasoning engine. We have deployed the ITS in a CS course. Results indicate that the ITS was able to learn to deliver more appropriate examples and problems to the students.
机译:许多智能辅导系统(ITS)已开发,部署,评估和经过验证,以促进学习。然而,大多数这些系统通常都不适应新的情况,不要自我评估和自我配置自己的策略,并不监视学习内容的使用历史,这些内容正在向学生提供或呈现给学生。这些缺点迫使开发人员在手动修订和微调学习和教学内容中花费很多开发时间。在本文中,我们描述了一种智能代理,可自适应地为不同学生提供学习材料,以代理观察到的学习材料和学生概况的使用历史。学生会互动包括通过学习材料的活动,例如题目教程,一组示例和一系列问题。我们的假设是,我们的代理人将能够捕获和利用这些学生活动作为底漆,以选择向学生提供适当的示例或问题。使用综合的内省内省案例的推理方法,我们的代理商进一步了解其经验,并改善其推理过程 - 包括教学策略 - 适应学生需求。此外,我们的代理监控了学习材料的使用历史,以提高其性能。我们已经建立了使用该集成内部案例的推理引擎的代理商的端到端。我们已在CS课程中部署了它。结果表明,其能够学会为学生提供更合适的例子和问题。

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