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Agent Technologies Designed to Facilitate Interactive Knowledge Construction

机译:旨在促进交互式知识构建的Agent技术

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摘要

During the last decade, interdisciplinary researchers have developed technologies with animated pedagogical agents that interact with the student in language and other communication channels (such as facial expressions and gestures). These pedagogical agents model good learning strategies and coach the students in actively constructing knowledge during learning. This article describes computer technologies that have been developed during the last decade with tutors that attempt to facilitate deep comprehension (e.g., causal explanations, plans, logical justifications), reasoning in natural language, and inquiry (i.e., question asking, question answering, hypothesis testing). These tutors target high school and college students who learn about topics in science and technology. The primary example is AutoTutor, a system on the Internet that helps students compose answers to deep-reasoning questions and solutions to problems by holding a conversation. AutoTutor's dialogue moves include feedback (positive, neutral, and negative), pumps for more information (“Tell me more.”), hints, prompts to fill in missing words, summaries, corrections of student misconceptions, and answers to student questions. Other learning technologies with agents include the Human Use Regulatory Affairs Advisor (HURAA); Source, Evidence, Explanation, and Knowledge (SEEK) Web Tutor; Interactive Strategy Trainer for Active Reading and Thinking (iSTART); Instruction with Deep-level Reasoning questions In Vicarious Environments (iDRIVE); and Acquiring Research Investigative and Evaluative Skills (ARIES). These systems have been tested on their effectiveness in facilitating knowledge construction. They also have uncovered insights on the prospects of designing agents to effectively communicate in language and discourse.
机译:在过去的十年中,跨学科研究人员开发了带有动画教学代理的技术,这些代理通过语言和其他沟通渠道(例如面部表情和手势)与学生互动。这些教学代理为良好的学习策略建模,并指导学生在学习过程中积极构建知识。本文介绍了过去十年来开发的计算机技术,这些计算机技术的教师试图促进深度理解(例如,因果解释,计划,逻辑论证),自然语言推理和询问(即,问题提问,问题回答,假设)测试)。这些导师针对学习科学和技术主题的高中和大学生。最主要的例子是AutoTutor,它是Internet上的一个系统,可以通过对话来帮助学生撰写深层次问题的答案以及问题的解决方案。 AutoTutor的对话动作包括反馈(积极,中立和消极),获取更多信息(“告诉我更多”),提示,提示以补充遗漏的单词,摘要,纠正学生的误解以及对学生的问题的答案。与代理商一起的其他学习技术包括人类使用法规事务顾问(HURAA);来源,证据,解释和知识(SEEK)网络辅导员;积极阅读和思考的互动策略培训师(iSTART);替代环境中的深度推理问题教学(iDRIVE);和获得研究调查和评估技能(ARIES)。已对这些系统在促进知识构建方面的有效性进行了测试。他们还发现了有关设计代理以有效地进行语言和话语交流的前景的见解。

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  • 来源
    《Discourse Processes》 |2008年第4期|298-322|共25页
  • 作者单位

    Department of Psychology, University of Memphis,;

    Department of Psychology, University of Memphis,;

    Department of Psychology, University of Memphis,;

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  • 正文语种 eng
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