Sergio Miranda, G. Mangione, F. Orciuoli, M. Gaeta, V. Loia
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引用次数: 50
摘要
在MOOC环境中,学生在选择课程的过程中感到孤独,这导致了他们的学习需求和工作目标。他们也认为自己是日程、成果和评估结果方面的进展的控制者。学生进入MOOC环境是为了发展或提高专业能力,获得形成性学分,并获得认证,以获得更多的就业机会,但统计数据显示,辍学率很高,很少有学生获得有用的学分和最终认证。这些问题主要涉及在数千名不同背景的学习者的课程中难以保证“教学存在”,以及对有意义的学习过程的评估方法不有效,对个人学习路径的构建有目标和反馈。特别是利用IWT平台的自适应和个性化特点,提供ARWE (Adaptive remediation work Environment,自适应补救工作环境),以弥补mooc中一对一辅导的不足,缓解辍学问题。这项工作的主要原始贡献涉及一种自动生成测验的方法的定义,利用基于语义的方法,以填充ARWE中现有的电子测试工具,实际上减少了教师在评估编写阶段的工作量。
Automatic generation of assessment objects and Remedial Works for MOOCs
In the MOOC environments, the students feel to be alone in the process of choosing courses leading to their learning needs and work objectives. They perceive also to be controllers of their progresses with respect to calendars, fruition, assessment results. Students come into the MOOC environments to develop or enhance professional competences, to earn formative credits and to achieve certifications to get more employment opportunities, but the statistics underline high level of drop-out and few released useful credits and final certifications. These problems are mainly related to the difficulty to guarantee the “teaching presence” in courses with thousands of learners having different background and to the ineffective assessment methods for a meaningful learning process looking at the objectives and giving feedbacks for individual learning paths construction. The work, in particular, exploits the adaptation and personalization features of IWT platform in order to provide ARWE (Adaptive Remedial Work Environment) in order to fill the lack of a one-to-one tutoring mitigating the drop-out problem in MOOCs. The main original contribution of this work concerns the definition of an approach to automatically generate quizzes, exploiting a semantic-based method, in order to populate the e-Testing tool existing in ARWE, decreasing, de facto, the effort for instructors in the assessment authoring phase.