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Metamodel for personalized adaptation of pedagogical strategies using metacognition in Intelligent Tutoring Systems

机译:metamodel用于在智能辅导系统中使用元认知来个性化地适应教学策略

摘要

Abstract: the modeling process of metacognitive functions in Intelligent Tutoring Systems (ITS) is a difficult and time-consuming task. In particular when the integration of several metacognitive components, such as self-regulation and metamemory is needed. Metacognition has been used in Artificial Intelligence (AI) to improve the performance of complex systems such as ITS. However the design ITS with metacognitive capabilities is a complex task due to the number and complexity of processes involved. The modeling process of ITS is in itself a difficult task and often requires experienced designers and programmers, even when using authoring tools. In particular the design of the pedagogical strategies for an ITS is complex and requires the interaction of a number of variables that define it as a dynamic process. This doctoral thesis presents a metamodel for the personalized adaptation of pedagogical strategies integrating metamemory and self-regulation in ITS. The metamodel called MPPSM (Metamodel of Personalized adaptation of Pedagogical Strategies using Metacognition in intelligent tutoring systems) was synthetized from the analysis of 40 metacognitive models and 45 ITS models that exist in the literature. MPPSMhas a conceptual architecture with four levels of modeling according to the standard Meta- Object Facility (MOF) of Model-Driven Architecture (MDA) methodology. MPPSM enables designers to have modeling tools in early stage of software development process to produce more robust ITS that are able to self-regulate their own reasoning and learning processes. In this sense, a concrete syntax composed of a graphic notation called M++ was defined in order to make the MPPSM metamodel more usable. M++ is a Domain-Specific Visual Language (DSVL) for modeling metacognition in ITS. M++ has approximately 20 tools for modeling metacognitive systems with introspective monitoring and meta-level control. MPPSM allows the generation of metacognitive models using M++ in a visual editor named MetaThink. In MPPSM-based models metacognitive components required for monitoring and executive control of the reasoning processes take place in each module of an ITS can be specified. MPPSM-based models represent the cycle of reasoning of an ITS about: (i) failures generated in its own reasoning tasks (e.g. self-regulation); and (ii) anomalies in events that occur in its Long-Term Memory (LTM) (e.g. metamemory). A prototype of ITS called FUNPRO was developed for the validation of the performance of metacognitive mechanism of MPPSM in the process of the personalization of pedagogical strategies regarding to the preferences and profiles of real students. FUNPRO uses self-regulation to monitor and control the processes of reasoning at object-level and metamemory for the adaptation to changes in the constraints of information retrieval tasks from LTM. The major contributions of this work are: (i) the MOF-based metamodel for the personalization of pedagogical strategies using computational metacognition in ITS; (ii) the M++ DSVL for modeling metacognition in ITS; and (iii) the ITS prototype called FUNPRO (FUNdamentos de PROgramación) that aims to provide personalized instruction in the subject of Introduction to Programming. The results given in the experimental tests demonstrate: (i) metacognitive models generated are consistent with the MPPSM metamodel; (ii) positive perceptions of users with respect to the proposed DSVL and it provide preliminary information concerning the quality of the concrete syntax of M++; (iii) in FUNPRO, multi-level pedagogical model enhanced with metacognition allows the dynamic adaptation of the pedagogical strategy according to the profile of each student.
机译:摘要:智能辅导系统(ITS)中元认知功能的建模过程是一项艰巨且耗时的任务。特别是当需要整合一些元认知成分时,例如自我调节和元记忆。元认知已在人工智能(AI)中用于提高复杂系统(如ITS)的性能。然而,由于涉及的过程的数量和复杂性,具有元认知能力的ITS设计是一项复杂的任务。 ITS的建模过程本身就是一项艰巨的任务,即使使用创作工具时,也通常需要有经验的设计人员和程序员。特别是,ITS的教学策略的设计很复杂,需要将它定义为动态过程的许多变量进行交互。该博士论文提出了一种元模型,用于在ITS中整合元记忆和自我调节的教学策略的个性化调整。通过分析文献中存在的40种元认知模型和45种ITS模型,合成了称为MPPSM(在智能补习系统中使用元认知的个性化教学策略适应性元模型)的元模型。 MPPSM具有一个概念架构,根据模型驱动架构(MDA)方法的标准元对象功能(MOF),该架构具有四个建模级别。 MPPSM使设计人员能够在软件开发过程的早期阶段使用建模工具,以生成更强大的ITS,从而能够自我调节自己的推理和学习过程。从这个意义上讲,定义了由称为M ++的图形符号组成的具体语法,以使MPPSM元模型更可用。 M ++是一种领域特定的可视语言(DSVL),用于在ITS中建模元认知。 M ++拥有大约20种用于通过内省监控和元级别控制对元认知系统建模的工具。 MPPSM允许在名为MetaThink的可视编辑器中使用M ++生成元认知模型。在基于MPPSM的模型中,可以指定在ITS的每个模块中进行推理过程的监视和执行控制所需的元认知组件。基于MPPSM的模型代表了有关以下方面的ITS推理的周期:(i)在其自身的推理任务中产生的故障(例如,自我调节); (ii)在其长期记忆(LTM)中发生的事件(例如元存储器)中出现异常。开发了一个名为FUNPRO的ITS原型,以验证在针对实际学生的偏好和个人资料的教学策略个性化过程中MPPSM的元认知机制的性能。 FUNPRO使用自我调节来监视和控制对象级别和元存储器上的推理过程,以适应LTM中信息检索任务的约束变化。这项工作的主要贡献是:(i)基于MOF的元模型,用于在ITS中使用计算元认知对教学策略进行个性化; (ii)用于在ITS中建立元认知模型的M ++ DSVL; (iii)称为FUNPRO(FUNdamentos dePROgramación)的ITS原型,旨在提供有关编程入门的主题的个性化指导。实验测试给出的结果表明:(i)生成的元认知模型与MPPSM元模型一致; (ii)对用户对拟议的DSVL的积极看法,并提供有关M ++具体语法质量的初步信息; (iii)在FUNPRO中,通过元认知增强的多层次教学模型可以根据每个学生的个人资料动态调整教学策略。

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  • 入库时间 2022-08-31 16:16:01

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