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Advancing the Modeling of Student Performance through the Inclusionof Physiological Performance Measures

机译:通过纳入生理表现指标来促进学生表现的建模

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Sophisticated virtual environments and computer simulations provide realistic training environments and web-based delivery mechanisms enable students to train virtually anywhere, anytime. Consequently, the ability to automate instructional functions such as assessing and diagnosing student performance, providing instructional feedback, and appropriately advancing students through a given curriculum is vital to the effectiveness of these technologies. While simulations provide a rich environment for training complex tasks, they introduce a complex assessment environment, which creates challenges in the accurate and efficient diagnosis of trainee needs as a single behavior can be interpreted in several ways. Additionally, student state variables such as affect, personality, and motivation contribute to the numerous interpretations of a single student behavior. Therefore, accurate diagnosis of student learning needs is a daunting task; which has resulted in various investigations of simulation-based performance assessment techniques, but no single recommended best practice or guidelines. An adaptive learning research program (Perrin, Dargue, & Banks, 2003; Perrin et al., 2007) has developed a standards-based student modeling capability. This capability is based on root cause analysis of the underlying causes of student learning needs based on evaluation of fundamental knowledge mastery. As this approach is based on industry standards, this student modeling capability can be extended to include additional variables related to student performance such as student affect . In 2001, Sheldon demonstrated the feasibility and effectiveness of utilizing physiological measures to integrate student state variables into a student modeling capability. At the time of this research, physiological measurement devices used sensors that required the user to restrict his movements in order to ensure integrity of the data recorded and to not disturb the wiring that tethered him to a computerized recording device. Physiological measuring technologies have significantly advanced since this time, such that wireless, accurate measurement devices are available, thus allowing for integration with a training environment. The focus of this lecture is on bridging the student state and standards-based student modeling methodologies to provide an improved student modeling capability.
机译:先进的虚拟环境和计算机模拟提供了逼真的培训环境,基于Web的交付机制使学生几乎可以随时随地进行培训。因此,自动化教学功能(如评估和诊断学生表现,提供教学反馈以及通过给定课程适当促进学生学习)的能力对于这些技术的有效性至关重要。尽管模拟为培训复杂的任务提供了丰富的环境,但它们却引入了复杂的评估环境,由于单个行为可以通过多种方式进行解释,因此在准确有效地培训受训者的需求方面带来了挑战。此外,学生状态变量(如情感,性格和动机)有助于对单个学生行为的多种解释。因此,准确诊断学生的学习需求是一项艰巨的任务。这导致了对基于仿真的性能评估技术的各种研究,但没有一个推荐的最佳实践或指南。适应性学习研究计划(Perrin,Dargue和Banks,2003; Perrin等,2007)已经开发了基于标准的学生建模能力。此功能基于对基础知识掌握程度的评估,对学生学习需求的根本原因进行了根本原因分析。由于此方法基于行业标准,因此可以扩展此学生建模能力,以包括与学生表现相关的其他变量,例如学生情感。在2001年,谢尔登(Sheldon)展示了利用生理学方法将学生状态变量整合到学生建模能力中的可行性和有效性。在进行这项研究时,生理测量设备所使用的传感器要求用户限制其运动,以确保所记录数据的完整性,并且不会干扰将其束缚至计算机记录设备的布线。自那时以来,生理测量技术已取得了显着进步,因此可以使用无线,精确的测量设备,从而可以与培训环境集成。本讲座的重点是桥接学生状态和基于标准的学生建模方法,以提供改进的学生建模能力。

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